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In information science, an ontology encompasses a representation, formal naming, and definitions of the categories, properties, and relations between the concepts, data, or entities that pertain to one, many, or all domains of discourse. More simply, an ontology is a way of showing the properties of a subject area and how they are related, by defining a set of terms and relational expressions that represent the entities in that subject area. The field which studies ontologies so conceived is sometimes referred to as applied ontology.
Every academic discipline or field, in creating its terminology, thereby lays the groundwork for an ontology. Each uses ontological assumptions to frame explicit theories, research and applications. Improved ontologies may improve problem solving within that domain, interoperability of data systems, and discoverability of data. Translating research papers within every field is a problem made easier when experts from different countries maintain a controlled vocabulary of jargon between each of their languages. For instance, the definition and ontology of economics is a primary concern in Marxist economics, but also in other subfields of economics. An example of economics relying on information science occurs in cases where a simulation or model is intended to enable economic decisions, such as determining what capital assets are at risk and by how much (see risk management).
What ontologies in both information science and philosophy have in common is the attempt to represent entities, including both objects and events, with all their interdependent properties and relations, according to a system of categories. In both fields, there is considerable work on problems of ontology engineering (e.g., Quine and Kripke in philosophy, Sowa and Guarino in information science), and debates concerning to what extent normative ontology is possible (e.g., foundationalism and coherentism in philosophy, BFO and Cyc in artificial intelligence).
Applied ontology is considered by some as a successor to prior work in philosophy. However many current efforts are more concerned with establishing controlled vocabularies of narrow domains than with philosophical first principles, or with questions such as the mode of existence of fixed essences or whether enduring objects (e.g., perdurantism and endurantism) may be ontologically more primary than processes. Artificial intelligence has retained considerable attention regarding applied ontology in subfields like natural language processing within machine translation and knowledge representation, but ontology editors are being used often in a range of fields, including biomedical informatics, industry. Such efforts often use ontology editing tools such as Protégé.
Ontology in Philosophy
Ontology is a branch of philosophy and intersects areas such as metaphysics, epistemology, and philosophy of language, as it considers how knowledge, language, and perception relate to the nature of reality. Metaphysics deals with questions like "what exists?" and "what is the nature of reality?". One of five traditional branches of philosophy, metaphysics is concerned with exploring existence through properties, entities and relations such as those between particulars and universals, intrinsic and extrinsic properties, or essence and existence. Metaphysics has been an ongoing topic of discussion since recorded history.
Etymology
The compound word ontology combines onto-, from the Greek ὄν, on (gen. ὄντος, ontos), i.e. "being; that which is", which is the present participle of the verb εἰμί, eimí, i.e. "to be, I am", and -λογία, -logia, i.e. "logical discourse", see classical compounds for this type of word formation.
While the etymology is Greek, the oldest extant record of the word itself, the Neo-Latin form ontologia, appeared in 1606 in the work Ogdoas Scholastica by Jacob Lorhard (Lorhardus) and in 1613 in the by Rudolf Göckel (Goclenius).
The first occurrence in English of ontology as recorded by the OED (Oxford English Dictionary, online edition, 2008) came in or New Principles of Philosophy by Gideon Harvey.
Formal Ontology
Since the mid-1970s, researchers in the field of artificial intelligence (AI) have recognized that knowledge engineering is the key to building large and powerful AI systems[citation needed]. AI researchers argued that they could create new ontologies as computational models that enable certain kinds of automated reasoning, which was only marginally successful. In the 1980s, the AI community began to use the term ontology to refer to both a theory of a modeled world and a component of knowledge-based systems. In particular, David Powers introduced the word ontology to AI to refer to real world or robotic grounding, publishing in 1990 literature reviews emphasizing grounded ontology in association with the call for papers for a AAAI Summer Symposium Machine Learning of Natural Language and Ontology, with an expanded version published in SIGART Bulletin and included as a preface to the proceedings. Some researchers, drawing inspiration from philosophical ontologies, viewed computational ontology as a kind of applied philosophy.
In 1993, the widely cited web page and paper "Toward Principles for the Design of Ontologies Used for Knowledge Sharing" by Tom Gruber used ontology as a technical term in computer science closely related to earlier idea of semantic networks and taxonomies. Gruber introduced the term as a specification of a conceptualization:
An ontology is a description (like a formal specification of a program) of the concepts and relationships that can formally exist for an agent or a community of agents. This definition is consistent with the usage of ontology as set of concept definitions, but more general. And it is a different sense of the word than its use in philosophy.
Attempting to distance ontologies from taxonomies and similar efforts in knowledge modeling that rely on classes and inheritance, Gruber stated (1993):
Ontologies are often equated with taxonomic hierarchies of classes, class definitions, and the subsumption relation, but ontologies need not be limited to these forms. Ontologies are also not limited to conservative definitions – that is, definitions in the traditional logic sense that only introduce terminology and do not add any knowledge about the world. To specify a conceptualization, one needs to state axioms that do constrain the possible interpretations for the defined terms.
As refinement of Gruber's definition Feilmayr and Wöß (2016) stated: "An ontology is a formal, explicit specification of a shared conceptualization that is characterized by high semantic expressiveness required for increased complexity."
Formal Ontology Components
Contemporary ontologies share many structural similarities, regardless of the language in which they are expressed. Most ontologies describe individuals (instances), classes (concepts), attributes and relations.
Types
Domain ontology
A domain ontology (or domain-specific ontology) represents concepts which belong to a realm of the world, such as biology or politics. Each domain ontology typically models domain-specific definitions of terms. For example, the word card has many different meanings. An ontology about the domain of poker would model the "playing card" meaning of the word, while an ontology about the domain of computer hardware would model the "punched card" and "video card" meanings.
Since domain ontologies are written by different people, they represent concepts in very specific and unique ways, and are often incompatible within the same project. As systems that rely on domain ontologies expand, they often need to merge domain ontologies by hand-tuning each entity or using a combination of software merging and hand-tuning. This presents a challenge to the ontology designer. Different ontologies in the same domain arise due to different languages, different intended usage of the ontologies, and different perceptions of the domain (based on cultural background, education, ideology, etc.)[citation needed].
At present, merging ontologies that are not developed from a common upper ontology is a largely manual process and therefore time-consuming and expensive. Domain ontologies that use the same upper ontology to provide a set of basic elements with which to specify the meanings of the domain ontology entities can be merged with less effort. There are studies on generalized techniques for merging ontologies, but this area of research is still ongoing, and it is a recent event to see the issue sidestepped by having multiple domain ontologies using the same upper ontology like the OBO Foundry.
Upper ontology
An upper ontology (or foundation ontology) is a model of the commonly shared relations and objects that are generally applicable across a wide range of domain ontologies. It usually employs a core glossary that overarches the terms and associated object descriptions as they are used in various relevant domain ontologies.
Standardized upper ontologies available for use include BFO, BORO method, Dublin Core, GFO, Cyc, SUMO, UMBEL, and DOLCE.WordNet has been considered an upper ontology by some and has been used as a linguistic tool for learning domain ontologies.
Hybrid ontology
The Gellish ontology is an example of a combination of an upper and a domain ontology.
Visualization
A survey of ontology visualization methods is presented by Katifori et al. An updated survey of ontology visualization methods and tools was published by Dudás et al. The most established ontology visualization methods, namely indented tree and graph visualization are evaluated by Fu et al. A visual language for ontologies represented in OWL is specified by the Visual Notation for OWL Ontologies (VOWL).
Engineering
Ontology engineering (also called ontology building) is a set of tasks related to the development of ontologies for a particular domain. It is a subfield of knowledge engineering that studies the ontology development process, the ontology life cycle, the methods and methodologies for building ontologies, and the tools and languages that support them.
Ontology engineering aims to make explicit the knowledge contained in software applications, and organizational procedures for a particular domain. Ontology engineering offers a direction for overcoming semantic obstacles, such as those related to the definitions of business terms and software classes. Known challenges with ontology engineering include:
- Ensuring the ontology is current with domain knowledge and term use
- Providing sufficient specificity and concept coverage for the domain of interest, thus minimizing the content completeness problem
- Ensuring the ontology can support its use cases
Editors
Ontology editors are applications designed to assist in the creation or manipulation of ontologies. It is common for ontology editors to use one or more ontology languages.
Aspects of ontology editors include: visual navigation possibilities within the knowledge model, inference engines and information extraction; support for modules; the import and export of foreign knowledge representation languages for ontology matching; and the support of meta-ontologies such as OWL-S, Dublin Core, etc.
Learning
Ontology learning is the automatic or semi-automatic creation of ontologies, including extracting a domain's terms from natural language text. As building ontologies manually is extremely labor-intensive and time-consuming, there is great motivation to automate the process. Information extraction and text mining have been explored to automatically link ontologies to documents, for example in the context of the BioCreative challenges.
Research
Epistemological assumptions, which in research asks "What do you know? or "How do you know it?", creates the foundation researchers use when approaching a certain topic or area for potential research. As epistemology is directly linked to knowledge and how we come about accepting certain truths, individuals conducting academic research must understand what allows them to begin theory building. Simply, epistemological assumptions force researchers to question how they arrive at the knowledge they have.[citation needed]
Languages
An ontology language is a formal language used to encode an ontology. There are a number of such languages for ontologies, both proprietary and standards-based:
- Common Algebraic Specification Language is a general logic-based specification language developed within the IFIP working group 1.3 "Foundations of System Specifications" and is a de facto standard language for software specifications. It is now being applied to ontology specifications in order to provide modularity and structuring mechanisms.
- Common logic is ISO standard 24707, a specification of a family of ontology languages that can be accurately translated into each other.
- The Cyc project has its own ontology language called CycL, based on first-order predicate calculus with some higher-order extensions.
- DOGMA (Developing Ontology-Grounded Methods and Applications) adopts the fact-oriented modeling approach to provide a higher level of semantic stability.
- The Gellish language includes rules for its own extension and thus integrates an ontology with an ontology language.
- IDEF5 is a software engineering method to develop and maintain usable, accurate, domain ontologies.
- KIF is a syntax for first-order logic that is based on S-expressions. SUO-KIF is a derivative version supporting the Suggested Upper Merged Ontology.
- MOF and UML are standards of the OMG
- Olog is a category theoretic approach to ontologies, emphasizing translations between ontologies using functors.
- OBO, a language used for biological and biomedical ontologies.
- OntoUML is an ontologically well-founded profile of UML for conceptual modeling of domain ontologies.
- OWL is a language for making ontological statements, developed as a follow-on from RDF and RDFS, as well as earlier ontology language projects including OIL, DAML, and DAML+OIL. OWL is intended to be used over the World Wide Web, and all its elements (classes, properties and individuals) are defined as RDF resources, and identified by URIs.
- Rule Interchange Format (RIF) and F-Logic combine ontologies and rules.
- Semantic Application Design Language (SADL) captures a subset of the expressiveness of OWL, using an English-like language entered via an Eclipse Plug-in.
- SBVR (Semantics of Business Vocabularies and Rules) is an OMG standard adopted in industry to build ontologies.
- TOVE Project, TOronto Virtual Enterprise project
Published examples
- Arabic Ontology, a linguistic ontology for Arabic, which can be used as an Arabic Wordnet but with ontologically-clean content.
- AURUM – Information Security Ontology, An ontology for information security knowledge sharing, enabling users to collaboratively understand and extend the domain knowledge body. It may serve as a basis for automated information security risk and compliance management.
- BabelNet, a very large multilingual semantic network and ontology, lexicalized in many languages
- Basic Formal Ontology, a formal upper ontology designed to support scientific research
- BioPAX, an ontology for the exchange and interoperability of biological pathway (cellular processes) data
- BMO, an e-Business Model Ontology based on a review of enterprise ontologies and business model literature
- SSBMO, a Strongly Sustainable Business Model Ontology based on a review of the systems based natural and social science literature (including business). Includes critique of and significant extensions to the Business Model Ontology (BMO).
- CCO and GexKB, Application Ontologies (APO) that integrate diverse types of knowledge with the Cell Cycle Ontology (CCO) and the Gene Expression Knowledge Base (GexKB)
- CContology (Customer Complaint Ontology), an e-business ontology to support online customer complaint management
- CIDOC Conceptual Reference Model, an ontology for cultural heritage
- COSMO, a Foundation Ontology (current version in OWL) that is designed to contain representations of all of the primitive concepts needed to logically specify the meanings of any domain entity. It is intended to serve as a basic ontology that can be used to translate among the representations in other ontologies or databases. It started as a merger of the basic elements of the OpenCyc and SUMO ontologies, and has been supplemented with other ontology elements (types, relations) so as to include representations of all of the words in the Longman dictionary defining vocabulary.
- Computer Science Ontology, an automatically generated ontology of research topics in the field of computer science
- Cyc, a large Foundation Ontology for formal representation of the universe of discourse
- Disease Ontology, designed to facilitate the mapping of diseases and associated conditions to particular medical codes
- DOLCE, a Descriptive Ontology for Linguistic and Cognitive Engineering
- Drammar, ontology of drama
- Dublin Core, a simple ontology for documents and publishing
- Financial Industry Business Ontology (FIBO), a business conceptual ontology for the financial industry
- Foundational, Core and Linguistic Ontologies
- Foundational Model of Anatomy, an ontology for human anatomy
- Friend of a Friend, an ontology for describing persons, their activities and their relations to other people and objects
- Gene Ontology for genomics
- Gellish English dictionary, an ontology that includes a dictionary and taxonomy that includes an upper ontology and a lower ontology that focuses on industrial and business applications in engineering, technology and procurement.
- Geopolitical ontology, an ontology describing geopolitical information created by Food and Agriculture Organization(FAO). The geopolitical ontology includes names in multiple languages (English, French, Spanish, Arabic, Chinese, Russian and Italian); maps standard coding systems (UN, ISO, FAOSTAT, AGROVOC, etc.); provides relations among territories (land borders, group membership, etc.); and tracks historical changes. In addition, FAO provides web services of geopolitical ontology and a module maker to download modules of the geopolitical ontology into different formats (RDF, XML, and EXCEL). See more information at FAO Country Profiles.
- GAO (General Automotive Ontology) – an ontology for the automotive industry that includes 'car' extensions
- GOLD, General Ontology for Linguistic Description
- GUM (Generalized Upper Model), a linguistically motivated ontology for mediating between clients systems and natural language technology
- IDEAS Group, a formal ontology for enterprise architecture being developed by the Australian, Canadian, UK and U.S. Defence Depts.
- Linkbase, a formal representation of the biomedical domain, founded upon Basic Formal Ontology.
- LPL, Landmark Pattern Language
- NCBO Bioportal, biological and biomedical ontologies and associated tools to search, browse and visualise
- NIFSTD Ontologies from the Neuroscience Information Framework: a modular set of ontologies for the neuroscience domain.
- OBO-Edit, an ontology browser for most of the Open Biological and Biomedical Ontologies
- OBO Foundry, a suite of interoperable reference ontologies in biology and biomedicine
- OMNIBUS Ontology, an ontology of learning, instruction, and instructional design
- Ontology for Biomedical Investigations, an open-access, integrated ontology of biological and clinical investigations
- ONSTR, Ontology for Newborn Screening Follow-up and Translational Research, Newborn Screening Follow-up Data Integration Collaborative, Emory University, Atlanta.
- Plant Ontology for plant structures and growth/development stages, etc.
- POPE, Purdue Ontology for Pharmaceutical Engineering
- PRO, the Protein Ontology of the Protein Information Resource, Georgetown University
- ProbOnto, knowledge base and ontology of probability distributions.
- Program abstraction taxonomy[citation needed]
- Protein Ontology for proteomics
- RXNO Ontology, for name reactions in chemistry
- SCDO, the Sickle Cell Disease Ontology, facilitates data sharing and collaborations within the SDC community, amongst other applications (see list on SCDO website).
- Schema.org, for embedding structured data into web pages, primarily for the benefit of search engines
- Sequence Ontology, for representing genomic feature types found on biological sequences
- SNOMED CT (Systematized Nomenclature of Medicine – Clinical Terms)
- Suggested Upper Merged Ontology, a formal upper ontology
- Systems Biology Ontology (SBO), for computational models in biology
- SWEET, Semantic Web for Earth and Environmental Terminology
- SSN/SOSA, The Semantic Sensor Network Ontology (SSN) and Sensor, Observation, Sample, and Actuator Ontology (SOSA) are W3C Recommendation and OGC Standards for describing sensors and their observations.
- ThoughtTreasure ontology
- TIME-ITEM, Topics for Indexing Medical Education
- Uberon, representing animal anatomical structures
- UMBEL, a lightweight reference structure of 20,000 subject concept classes and their relationships derived from OpenCyc
- WordNet, a lexical reference system
- YAMATO, Yet Another More Advanced Top-level Ontology
- YSO – General Finnish Ontology
The W3C Linking Open Data community project coordinates attempts to converge different ontologies into worldwide Semantic Web.
Libraries
The development of ontologies has led to the emergence of services providing lists or directories of ontologies called ontology libraries.
The following are libraries of human-selected ontologies.
- COLORE is an open repository of first-order ontologies in Common Logic with formal links between ontologies in the repository.
- DAML Ontology Library maintains a legacy of ontologies in DAML.
- Ontology Design Patterns portal is a wiki repository of reusable components and practices for ontology design, and also maintains a list of exemplary ontologies.
- Protégé Ontology Library contains a set of OWL, Frame-based and other format ontologies.
- SchemaWeb is a directory of RDF schemata expressed in RDFS, OWL and DAML+OIL.
The following are both directories and search engines.
- OBO Foundry is a suite of interoperable reference ontologies in biology and biomedicine.
- Bioportal (ontology repository of NCBO)
- Linked Open Vocabularies
- OntoSelect Ontology Library offers similar services for RDF/S, DAML and OWL ontologies.
- Ontaria is a "searchable and browsable directory of semantic web data" with a focus on RDF vocabularies with OWL ontologies. (NB Project "on hold" since 2004).
- Swoogle is a directory and search engine for all RDF resources available on the Web, including ontologies.
- Open Ontology Repository initiative
- ROMULUS is a foundational ontology repository aimed at improving semantic interoperability. Currently there are three foundational ontologies in the repository: DOLCE, BFO and GFO.
Examples of applications
In general, ontologies can be used beneficially in several fields.
- Enterprise applications. A more concrete example is SAPPHIRE (Health care) or Situational Awareness and Preparedness for Public Health Incidences and Reasoning Engines which is a semantics-based health information system capable of tracking and evaluating situations and occurrences that may affect public health.
- Geographic information systems bring together data from different sources and benefit therefore from ontological metadata which helps to connect the semantics of the data.
- Domain-specific ontologies are extremely important in biomedical research, which requires named entity disambiguation of various biomedical terms and abbreviations that have the same string of characters but represent different biomedical concepts. For example, CSF can represent Colony Stimulating Factor or Cerebral Spinal Fluid, both of which are represented by the same term, CSF, in biomedical literature. This is why a large number of public ontologies are related to the life sciences. Life science data science tools that fail to implement these types of biomedical ontologies will not be able to accurately determine causal relationships between concepts.
See also
- Commonsense knowledge bases
- Concept map
- Controlled vocabulary
- Classification scheme (information science)
- Folksonomy
- Formal concept analysis
- Formal ontology
- General Concept Lattice
- Knowledge graph
- Lattice
- Ontology
- Ontology alignment
- Ontology chart
- Open Semantic Framework
- Semantic technology
- Soft ontology
- Terminology extraction
- Weak ontology
- Web Ontology Language
- Related philosophical concepts
- Alphabet of human thought
- Characteristica universalis
- Interoperability
- Level of measurement
- Metalanguage
- Natural semantic metalanguage
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Further reading
- Oberle, D.; Guarino, N.; Staab, S. (2009). "What is an Ontology?" (PDF). Handbook on Ontologies. pp. 1–17. doi:10.1007/978-3-540-92673-3_0. ISBN 978-3-540-70999-2. S2CID 8522608.
- Fensel, D.; van Harmelen, F.; Horrocks, I.; McGuinness, D.L.; Patel-Schneider, P.F. (2001). "OIL: an ontology infrastructure for the Semantic Web". IEEE Intelligent Systems. 16 (2): 38–45. doi:10.1109/5254.920598.
- Gangemi, A.; Presutti, V. "Ontology Design Patterns" (PDF). Staab & Studer 2009.[permanent dead link ]
- Golemati, M.; Katifori, A.; Vassilakis, C.; Lepouras, G.; Halatsis, C. (2007). "Creating an Ontology for the User Profile# Method and Applications" (PDF). Proceedings of the First IEEE International Conference on Research Challenges in Information Science (RCIS), Morocco 2007. CiteSeerX 10.1.1.74.9399. Archived from the original (PDF) on 2008-12-17.
- Mizoguchi, R. (2004). "Tutorial on ontological engineering: Part 3: Advanced course of ontological engineering" (PDF). New Gener Comput. 22: 193–220. doi:10.1007/BF03040960. S2CID 23747079. Archived from the original (PDF) on 2013-03-09. Retrieved 2009-06-08.
- Gruber, T. R. (1993). "A translation approach to portable ontology specifications" (PDF). Knowledge Acquisition. 5 (2): 199–220. CiteSeerX 10.1.1.101.7493. doi:10.1006/knac.1993.1008. S2CID 15709015.
- Maedche, A.; Staab, S. (2001). "Ontology learning for the Semantic Web". IEEE Intelligent Systems. 16 (2): 72–79. doi:10.1109/5254.920602. S2CID 1411149.
- Noy, Natalya F.; McGuinness, Deborah L. (March 2001). "Ontology Development 101: A Guide to Creating Your First Ontology". Stanford Knowledge Systems Laboratory Technical Report KSL-01-05, Stanford Medical Informatics Technical Report SMI-2001-0880. Archived from the original on 2010-07-14.
- Chaminda Abeysiriwardana, Prabath; Kodituwakku, Saluka R (2012). "Ontology Based Information Extraction for Disease Intelligence". International Journal of Research in Computer Science. 2 (6): 7–19. arXiv:1211.3497. Bibcode:2012arXiv1211.3497C. doi:10.7815/ijorcs.26.2012.051 (inactive 8 December 2024). S2CID 11297019.
{{cite journal}}
: CS1 maint: DOI inactive as of December 2024 (link) - Razmerita, L.; Angehrn, A.; Maedche, A. (2003). "Ontology-Based User Modeling for Knowledge Management Systems". User Modeling 2003. Lecture Notes in Computer Science. Vol. 2702. Springer. pp. 213–7. CiteSeerX 10.1.1.102.4591. doi:10.1007/3-540-44963-9_29. ISBN 3-540-44963-9.
- Soylu, A.; De Causmaecker, Patrick (2009). "Merging model driven and ontology driven system development approaches pervasive computing perspective". Proceedings of the 24th International Symposium on Computer and Information Sciences. pp. 730–5. doi:10.1109/ISCIS.2009.5291915. ISBN 978-1-4244-5021-3. S2CID 2267593.
- Smith, B. (2008). "Ontology (Science)". In Eschenbach, C.; Gruninger, M. (eds.). Formal Ontology in Information Systems, Proceedings of FOIS 2008. ISO Press. pp. 21–35. CiteSeerX 10.1.1.681.2599.
- Staab, S.; Studer, R., eds. (2009). "What is an Ontology?". Handbook on Ontologies (2nd ed.). Springer. pp. 1–17. doi:10.1007/978-3-540-92673-3_0. ISBN 978-3-540-92673-3. S2CID 8522608.
- Uschold, Mike; Gruninger, M. (1996). "Ontologies: Principles, Methods and Applications". Knowledge Engineering Review. 11 (2): 93–136. CiteSeerX 10.1.1.111.5903. doi:10.1017/S0269888900007797. S2CID 2618234.
- Pidcock, W. "What are the differences between a vocabulary, a taxonomy, a thesaurus, an ontology, and a meta-model?". Archived from the original on 2009-10-14.
- Yudelson, M.; Gavrilova, T.; Brusilovsky, P. (2005). "Towards User Modeling Meta-ontology". User Modeling 2005. Lecture Notes in Computer Science. Vol. 3538. Springer. pp. 448–452. CiteSeerX 10.1.1.86.7079. doi:10.1007/11527886_62. ISBN 978-3-540-31878-1.
- Movshovitz-Attias, Dana; Cohen, William W. (2012). "Bootstrapping Biomedical Ontologies for Scientific Text using NELL" (PDF). Proceedings of the 2012 Workshop on Biomedical Natural Language Processing. Association for Computational Linguistics. pp. 11–19. CiteSeerX 10.1.1.376.2874.
External links
![image](https://www.english.nina.az/wikipedia/image/aHR0cHM6Ly93d3cuZW5nbGlzaC5uaW5hLmF6L3dpa2lwZWRpYS9pbWFnZS9hSFIwY0hNNkx5OTFjR3h2WVdRdWQybHJhVzFsWkdsaExtOXlaeTkzYVd0cGNHVmthV0V2Wlc0dmRHaDFiV0l2TkM4MFlTOURiMjF0YjI1ekxXeHZaMjh1YzNabkx6TXdjSGd0UTI5dGJXOXVjeTFzYjJkdkxuTjJaeTV3Ym1jPS5wbmc=.png)
- Knowledge Representation at Open Directory Project
- Library of ontologies (Archive, Unmaintained)
- GoPubMed using Ontologies for searching
- ONTOLOG (a.k.a. "Ontolog Forum") - an Open, International, Virtual Community of Practice on Ontology, Ontological Engineering and Semantic Technology
- Use of Ontologies in Natural Language Processing
- Ontology Summit - an annual series of events (first started in 2006) that involves the ontology community and communities related to each year's theme chosen for the summit.
- Standardization of Ontologies
In information science an ontology encompasses a representation formal naming and definitions of the categories properties and relations between the concepts data or entities that pertain to one many or all domains of discourse More simply an ontology is a way of showing the properties of a subject area and how they are related by defining a set of terms and relational expressions that represent the entities in that subject area The field which studies ontologies so conceived is sometimes referred to as applied ontology Every academic discipline or field in creating its terminology thereby lays the groundwork for an ontology Each uses ontological assumptions to frame explicit theories research and applications Improved ontologies may improve problem solving within that domain interoperability of data systems and discoverability of data Translating research papers within every field is a problem made easier when experts from different countries maintain a controlled vocabulary of jargon between each of their languages For instance the definition and ontology of economics is a primary concern in Marxist economics but also in other subfields of economics An example of economics relying on information science occurs in cases where a simulation or model is intended to enable economic decisions such as determining what capital assets are at risk and by how much see risk management What ontologies in both information science and philosophy have in common is the attempt to represent entities including both objects and events with all their interdependent properties and relations according to a system of categories In both fields there is considerable work on problems of ontology engineering e g Quine and Kripke in philosophy Sowa and Guarino in information science and debates concerning to what extent normative ontology is possible e g foundationalism and coherentism in philosophy BFO and Cyc in artificial intelligence Applied ontology is considered by some as a successor to prior work in philosophy However many current efforts are more concerned with establishing controlled vocabularies of narrow domains than with philosophical first principles or with questions such as the mode of existence of fixed essences or whether enduring objects e g perdurantism and endurantism may be ontologically more primary than processes Artificial intelligence has retained considerable attention regarding applied ontology in subfields like natural language processing within machine translation and knowledge representation but ontology editors are being used often in a range of fields including biomedical informatics industry Such efforts often use ontology editing tools such as Protege Ontology in PhilosophyOntology is a branch of philosophy and intersects areas such as metaphysics epistemology and philosophy of language as it considers how knowledge language and perception relate to the nature of reality Metaphysics deals with questions like what exists and what is the nature of reality One of five traditional branches of philosophy metaphysics is concerned with exploring existence through properties entities and relations such as those between particulars and universals intrinsic and extrinsic properties or essence and existence Metaphysics has been an ongoing topic of discussion since recorded history EtymologyThe compound word ontology combines onto from the Greek ὄn on gen ὄntos ontos i e being that which is which is the present participle of the verb eἰmi eimi i e to be I am and logia logia i e logical discourse see classical compounds for this type of word formation While the etymology is Greek the oldest extant record of the word itself the Neo Latin form ontologia appeared in 1606 in the work Ogdoas Scholastica by Jacob Lorhard Lorhardus and in 1613 in the by Rudolf Gockel Goclenius The first occurrence in English of ontology as recorded by the OED Oxford English Dictionary online edition 2008 came in or New Principles of Philosophy by Gideon Harvey Formal OntologySince the mid 1970s researchers in the field of artificial intelligence AI have recognized that knowledge engineering is the key to building large and powerful AI systems citation needed AI researchers argued that they could create new ontologies as computational models that enable certain kinds of automated reasoning which was only marginally successful In the 1980s the AI community began to use the term ontology to refer to both a theory of a modeled world and a component of knowledge based systems In particular David Powers introduced the word ontology to AI to refer to real world or robotic grounding publishing in 1990 literature reviews emphasizing grounded ontology in association with the call for papers for a AAAI Summer Symposium Machine Learning of Natural Language and Ontology with an expanded version published in SIGART Bulletin and included as a preface to the proceedings Some researchers drawing inspiration from philosophical ontologies viewed computational ontology as a kind of applied philosophy In 1993 the widely cited web page and paper Toward Principles for the Design of Ontologies Used for Knowledge Sharing by Tom Gruber used ontology as a technical term in computer science closely related to earlier idea of semantic networks and taxonomies Gruber introduced the term as a specification of a conceptualization An ontology is a description like a formal specification of a program of the concepts and relationships that can formally exist for an agent or a community of agents This definition is consistent with the usage of ontology as set of concept definitions but more general And it is a different sense of the word than its use in philosophy Attempting to distance ontologies from taxonomies and similar efforts in knowledge modeling that rely on classes and inheritance Gruber stated 1993 Ontologies are often equated with taxonomic hierarchies of classes class definitions and the subsumption relation but ontologies need not be limited to these forms Ontologies are also not limited to conservative definitions that is definitions in the traditional logic sense that only introduce terminology and do not add any knowledge about the world To specify a conceptualization one needs to state axioms that do constrain the possible interpretations for the defined terms As refinement of Gruber s definition Feilmayr and Woss 2016 stated An ontology is a formal explicit specification of a shared conceptualization that is characterized by high semantic expressiveness required for increased complexity Formal Ontology ComponentsContemporary ontologies share many structural similarities regardless of the language in which they are expressed Most ontologies describe individuals instances classes concepts attributes and relations Types Domain ontology A domain ontology or domain specific ontology represents concepts which belong to a realm of the world such as biology or politics Each domain ontology typically models domain specific definitions of terms For example the word card has many different meanings An ontology about the domain of poker would model the playing card meaning of the word while an ontology about the domain of computer hardware would model the punched card and video card meanings Since domain ontologies are written by different people they represent concepts in very specific and unique ways and are often incompatible within the same project As systems that rely on domain ontologies expand they often need to merge domain ontologies by hand tuning each entity or using a combination of software merging and hand tuning This presents a challenge to the ontology designer Different ontologies in the same domain arise due to different languages different intended usage of the ontologies and different perceptions of the domain based on cultural background education ideology etc citation needed At present merging ontologies that are not developed from a common upper ontology is a largely manual process and therefore time consuming and expensive Domain ontologies that use the same upper ontology to provide a set of basic elements with which to specify the meanings of the domain ontology entities can be merged with less effort There are studies on generalized techniques for merging ontologies but this area of research is still ongoing and it is a recent event to see the issue sidestepped by having multiple domain ontologies using the same upper ontology like the OBO Foundry Upper ontology An upper ontology or foundation ontology is a model of the commonly shared relations and objects that are generally applicable across a wide range of domain ontologies It usually employs a core glossary that overarches the terms and associated object descriptions as they are used in various relevant domain ontologies Standardized upper ontologies available for use include BFO BORO method Dublin Core GFO Cyc SUMO UMBEL and DOLCE WordNet has been considered an upper ontology by some and has been used as a linguistic tool for learning domain ontologies Hybrid ontology The Gellish ontology is an example of a combination of an upper and a domain ontology VisualizationA survey of ontology visualization methods is presented by Katifori et al An updated survey of ontology visualization methods and tools was published by Dudas et al The most established ontology visualization methods namely indented tree and graph visualization are evaluated by Fu et al A visual language for ontologies represented in OWL is specified by the Visual Notation for OWL Ontologies VOWL EngineeringOntology engineering also called ontology building is a set of tasks related to the development of ontologies for a particular domain It is a subfield of knowledge engineering that studies the ontology development process the ontology life cycle the methods and methodologies for building ontologies and the tools and languages that support them Ontology engineering aims to make explicit the knowledge contained in software applications and organizational procedures for a particular domain Ontology engineering offers a direction for overcoming semantic obstacles such as those related to the definitions of business terms and software classes Known challenges with ontology engineering include Ensuring the ontology is current with domain knowledge and term use Providing sufficient specificity and concept coverage for the domain of interest thus minimizing the content completeness problem Ensuring the ontology can support its use casesEditors Ontology editors are applications designed to assist in the creation or manipulation of ontologies It is common for ontology editors to use one or more ontology languages Aspects of ontology editors include visual navigation possibilities within the knowledge model inference engines and information extraction support for modules the import and export of foreign knowledge representation languages for ontology matching and the support of meta ontologies such as OWL S Dublin Core etc Learning Ontology learning is the automatic or semi automatic creation of ontologies including extracting a domain s terms from natural language text As building ontologies manually is extremely labor intensive and time consuming there is great motivation to automate the process Information extraction and text mining have been explored to automatically link ontologies to documents for example in the context of the BioCreative challenges Research Epistemological assumptions which in research asks What do you know or How do you know it creates the foundation researchers use when approaching a certain topic or area for potential research As epistemology is directly linked to knowledge and how we come about accepting certain truths individuals conducting academic research must understand what allows them to begin theory building Simply epistemological assumptions force researchers to question how they arrive at the knowledge they have citation needed LanguagesAn ontology language is a formal language used to encode an ontology There are a number of such languages for ontologies both proprietary and standards based Common Algebraic Specification Language is a general logic based specification language developed within the IFIP working group 1 3 Foundations of System Specifications and is a de facto standard language for software specifications It is now being applied to ontology specifications in order to provide modularity and structuring mechanisms Common logic is ISO standard 24707 a specification of a family of ontology languages that can be accurately translated into each other The Cyc project has its own ontology language called CycL based on first order predicate calculus with some higher order extensions DOGMA Developing Ontology Grounded Methods and Applications adopts the fact oriented modeling approach to provide a higher level of semantic stability The Gellish language includes rules for its own extension and thus integrates an ontology with an ontology language IDEF5 is a software engineering method to develop and maintain usable accurate domain ontologies KIF is a syntax for first order logic that is based on S expressions SUO KIF is a derivative version supporting the Suggested Upper Merged Ontology MOF and UML are standards of the OMG Olog is a category theoretic approach to ontologies emphasizing translations between ontologies using functors OBO a language used for biological and biomedical ontologies OntoUML is an ontologically well founded profile of UML for conceptual modeling of domain ontologies OWL is a language for making ontological statements developed as a follow on from RDF and RDFS as well as earlier ontology language projects including OIL DAML and DAML OIL OWL is intended to be used over the World Wide Web and all its elements classes properties and individuals are defined as RDF resources and identified by URIs Rule Interchange Format RIF and F Logic combine ontologies and rules Semantic Application Design Language SADL captures a subset of the expressiveness of OWL using an English like language entered via an Eclipse Plug in SBVR Semantics of Business Vocabularies and Rules is an OMG standard adopted in industry to build ontologies TOVE Project TOronto Virtual Enterprise projectPublished examplesArabic Ontology a linguistic ontology for Arabic which can be used as an Arabic Wordnet but with ontologically clean content AURUM Information Security Ontology An ontology for information security knowledge sharing enabling users to collaboratively understand and extend the domain knowledge body It may serve as a basis for automated information security risk and compliance management BabelNet a very large multilingual semantic network and ontology lexicalized in many languages Basic Formal Ontology a formal upper ontology designed to support scientific research BioPAX an ontology for the exchange and interoperability of biological pathway cellular processes data BMO an e Business Model Ontology based on a review of enterprise ontologies and business model literature SSBMO a Strongly Sustainable Business Model Ontology based on a review of the systems based natural and social science literature including business Includes critique of and significant extensions to the Business Model Ontology BMO CCO and GexKB Application Ontologies APO that integrate diverse types of knowledge with the Cell Cycle Ontology CCO and the Gene Expression Knowledge Base GexKB CContology Customer Complaint Ontology an e business ontology to support online customer complaint management CIDOC Conceptual Reference Model an ontology for cultural heritage COSMO a Foundation Ontology current version in OWL that is designed to contain representations of all of the primitive concepts needed to logically specify the meanings of any domain entity It is intended to serve as a basic ontology that can be used to translate among the representations in other ontologies or databases It started as a merger of the basic elements of the OpenCyc and SUMO ontologies and has been supplemented with other ontology elements types relations so as to include representations of all of the words in the Longman dictionary defining vocabulary Computer Science Ontology an automatically generated ontology of research topics in the field of computer science Cyc a large Foundation Ontology for formal representation of the universe of discourse Disease Ontology designed to facilitate the mapping of diseases and associated conditions to particular medical codes DOLCE a Descriptive Ontology for Linguistic and Cognitive Engineering Drammar ontology of drama Dublin Core a simple ontology for documents and publishing Financial Industry Business Ontology FIBO a business conceptual ontology for the financial industry Foundational Core and Linguistic Ontologies Foundational Model of Anatomy an ontology for human anatomy Friend of a Friend an ontology for describing persons their activities and their relations to other people and objects Gene Ontology for genomics Gellish English dictionary an ontology that includes a dictionary and taxonomy that includes an upper ontology and a lower ontology that focuses on industrial and business applications in engineering technology and procurement Geopolitical ontology an ontology describing geopolitical information created by Food and Agriculture Organization FAO The geopolitical ontology includes names in multiple languages English French Spanish Arabic Chinese Russian and Italian maps standard coding systems UN ISO FAOSTAT AGROVOC etc provides relations among territories land borders group membership etc and tracks historical changes In addition FAO provides web services of geopolitical ontology and a module maker to download modules of the geopolitical ontology into different formats RDF XML and EXCEL See more information at FAO Country Profiles GAO General Automotive Ontology an ontology for the automotive industry that includes car extensions GOLD General Ontology for Linguistic Description GUM Generalized Upper Model a linguistically motivated ontology for mediating between clients systems and natural language technology IDEAS Group a formal ontology for enterprise architecture being developed by the Australian Canadian UK and U S Defence Depts Linkbase a formal representation of the biomedical domain founded upon Basic Formal Ontology LPL Landmark Pattern Language NCBO Bioportal biological and biomedical ontologies and associated tools to search browse and visualise NIFSTD Ontologies from the Neuroscience Information Framework a modular set of ontologies for the neuroscience domain OBO Edit an ontology browser for most of the Open Biological and Biomedical Ontologies OBO Foundry a suite of interoperable reference ontologies in biology and biomedicine OMNIBUS Ontology an ontology of learning instruction and instructional design Ontology for Biomedical Investigations an open access integrated ontology of biological and clinical investigations ONSTR Ontology for Newborn Screening Follow up and Translational Research Newborn Screening Follow up Data Integration Collaborative Emory University Atlanta Plant Ontology for plant structures and growth development stages etc POPE Purdue Ontology for Pharmaceutical Engineering PRO the Protein Ontology of the Protein Information Resource Georgetown University ProbOnto knowledge base and ontology of probability distributions Program abstraction taxonomy citation needed Protein Ontology for proteomics RXNO Ontology for name reactions in chemistry SCDO the Sickle Cell Disease Ontology facilitates data sharing and collaborations within the SDC community amongst other applications see list on SCDO website Schema org for embedding structured data into web pages primarily for the benefit of search engines Sequence Ontology for representing genomic feature types found on biological sequences SNOMED CT Systematized Nomenclature of Medicine Clinical Terms Suggested Upper Merged Ontology a formal upper ontology Systems Biology Ontology SBO for computational models in biology SWEET Semantic Web for Earth and Environmental Terminology SSN SOSA The Semantic Sensor Network Ontology SSN and Sensor Observation Sample and Actuator Ontology SOSA are W3C Recommendation and OGC Standards for describing sensors and their observations ThoughtTreasure ontology TIME ITEM Topics for Indexing Medical Education Uberon representing animal anatomical structures UMBEL a lightweight reference structure of 20 000 subject concept classes and their relationships derived from OpenCyc WordNet a lexical reference system YAMATO Yet Another More Advanced Top level Ontology YSO General Finnish Ontology The W3C Linking Open Data community project coordinates attempts to converge different ontologies into worldwide Semantic Web LibrariesThe development of ontologies has led to the emergence of services providing lists or directories of ontologies called ontology libraries The following are libraries of human selected ontologies COLORE is an open repository of first order ontologies in Common Logic with formal links between ontologies in the repository DAML Ontology Library maintains a legacy of ontologies in DAML Ontology Design Patterns portal is a wiki repository of reusable components and practices for ontology design and also maintains a list of exemplary ontologies Protege Ontology Library contains a set of OWL Frame based and other format ontologies SchemaWeb is a directory of RDF schemata expressed in RDFS OWL and DAML OIL The following are both directories and search engines OBO Foundry is a suite of interoperable reference ontologies in biology and biomedicine Bioportal ontology repository of NCBO Linked Open Vocabularies OntoSelect Ontology Library offers similar services for RDF S DAML and OWL ontologies Ontaria is a searchable and browsable directory of semantic web data with a focus on RDF vocabularies with OWL ontologies NB Project on hold since 2004 Swoogle is a directory and search engine for all RDF resources available on the Web including ontologies Open Ontology Repository initiative ROMULUS is a foundational ontology repository aimed at improving semantic interoperability Currently there are three foundational ontologies in the repository DOLCE BFO and GFO Examples of applicationsIn general ontologies can be used beneficially in several fields Enterprise applications A more concrete example is SAPPHIRE Health care or Situational Awareness and Preparedness for Public Health Incidences and Reasoning Engines which is a semantics based health information system capable of tracking and evaluating situations and occurrences that may affect public health Geographic information systems bring together data from different sources and benefit therefore from ontological metadata which helps to connect the semantics of the data Domain specific ontologies are extremely important in biomedical research which requires named entity disambiguation of various biomedical terms and abbreviations that have the same string of characters but represent different biomedical concepts For example CSF can represent Colony Stimulating Factor or Cerebral Spinal Fluid both of which are represented by the same term CSF in biomedical literature This is why a large number of public ontologies are related to the life sciences Life science data science tools that fail to implement these types of biomedical ontologies will not be able to accurately determine causal relationships between concepts See alsoCommonsense knowledge bases Concept map Controlled vocabulary Classification scheme information science Folksonomy Formal concept analysis Formal ontology General Concept Lattice Knowledge graph Lattice Ontology Ontology alignment Ontology chart Open Semantic Framework Semantic technology Soft ontology Terminology extraction Weak ontology Web Ontology Language Related philosophical conceptsAlphabet of human thought Characteristica universalis Interoperability Level of measurement Metalanguage Natural semantic metalanguageReferencesDale Jacquette 2002 11 26 Ontology McGill Queen s University Press p 4 ISBN 9780773582675 Applied ontology as discipline or domain is scientific in that it applies the definition of being to determine the ontological commitments of other disciplines notably but not exclusively in the natural sciences in much the same way that applied mathematics in engineering is related to pure mathematics G Budin 2005 Ontology driven translation management in Helle V Dam ed Knowledge Systems and Translation Jan Engberg Heidrun Gerzymisch Arbogast Walter de Gruyter p 113 ISBN 978 3 11 018297 2 Palermo Giulio 10 January 2007 The ontology of economic power in capitalism mainstream economics and Marx Cambridge Journal of Economics 31 4 539 561 doi 10 1093 cje bel036 via Oxford Journals Zuniga Gloria L 1999 02 02 An Ontology Of Economic Objects Mpra Paper Research Division of the Federal Reserve Bank of St Louis Retrieved 2013 06 16 Sowa J F 1995 Top level ontological categories International Journal of Human Computer Studies 43 5 6 November December 669 85 doi 10 1006 ijhc 1995 1068 Bioportal Industrial Ontologies Foundry Musen Mark 2015 The Protege Project A Look Back and a Look Forward AI Matters 1 4 4 12 doi 10 1145 2757001 2757003 PMC 4883684 PMID 27239556 ontology Online Etymology Dictionary eἰmi Liddell Henry George Scott Robert A Greek English Lexicon at the Perseus Project Smith Barry 2022 The birth of ontology Journal of Knowledge Structures and Systems 3 57 66 Powers David 1983 Robot Intelligence Electronics Today International Powers David 1984 Natural Language the Natural Way Computer Compacts 2 3 4 100 109 doi 10 1016 0167 7136 84 90088 X Powers David Turk Chris 1989 Machine Learning of Natural Language Springer Verlag ISBN 978 1 4471 1697 4 Powers David 1991 Preface Goals Issues and Directions in Machine Learning of Natural Language and Ontology 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Valentina Josiane Ngo Munube Deogratias 2020 10 01 The Sickle Cell Disease Ontology Enabling Collaborative Research and Co Designing of New Planetary Health Applications OMICS A Journal of Integrative Biology 24 10 559 567 doi 10 1089 omi 2020 0153 PMC 7549008 PMID 33021900 Eilbeck K Lewis SE Mungall CJ Yandell M Stein L Durbin R Ashburner M 2005 The Sequence Ontology a tool for the unification of genome annotations Genome Biology 6 5 R44 doi 10 1186 gb 2005 6 5 r44 PMC 1175956 PMID 15892872 Niles I amp Pease A 2001 Toward a Standard Upper Ontology in Proceedings of the 2nd International Conference on Formal Ontology in Information Systems FOIS 2001 Chris Welty and Barry Smith eds pp2 9 SWEET Retrieved 11 March 2022 SSN Retrieved 10 November 2021 Mungall CJ Torniai C Gkoutos GV Lewis SE Haendel MA 2012 Uberon an integrative multi species anatomy ontology Genome Biol 13 1 R5 doi 10 1186 gb 2012 13 1 r5 PMC 3334586 PMID 22293552 YAMATO Archived from the original on 3 March 2011 Retrieved 10 February 2011 COLORE Archived from the original on 28 August 2011 Retrieved 4 May 2011 DAML Ontology Library Retrieved 10 February 2011 ODP Library Archived from the original on 13 October 2015 Retrieved 21 February 2013 Protege Ontology Library Retrieved 10 February 2011 SchemaWeb Archived from the original on 10 August 2011 Retrieved 10 February 2011 Smith B Ashburner M Rosse C Bard J Bug W Ceusters W Goldberg L J Eilbeck K Ireland A Mungall C J Leontis N Rocca Serra P Ruttenberg A Sansone S A Scheuermann R H Shah N Whetzel P L Lewis S 2007 The OBO Foundry Coordinated evolution of ontologies to support biomedical data integration Nature Biotechnology 25 11 1251 1255 doi 10 1038 nbt1346 PMC 2814061 PMID 17989687 OntoSelect Archived from the original on 11 November 2010 Retrieved 10 February 2011 Ontaria Retrieved 10 February 2011 OpenOntologyRepository OntologPSMW ontologforum org Retrieved 2019 03 28 Khan Zubeida Casmod Keet C Maria 2013 The Foundational Ontology Library ROMULUS Model and Data Engineering Lecture Notes in Computer Science Vol 8216 pp 200 211 doi 10 1007 978 3 642 41366 7 17 ISBN 978 3 642 41365 0 S2CID 1925510 Retrieved 25 June 2023 Oberle Daniel 2014 How ontologies benefit enterprise applications PDF Semantic Web 5 6 IOS Press 473 491 doi 10 3233 SW 130114 Frank Andrew U 2001 Tiers of ontology and consistency constraints in geographical information systems International Journal of Geographical Information Science 15 7 667 678 Bibcode 2001IJGIS 15 667F doi 10 1080 13658810110061144 S2CID 6616354 Stevenson Mark Guo Yikun 2010 Disambiguation of ambiguous biomedical terms using examples generated from the UMLS Metathesaurus Journal of Biomedical Informatics 43 5 762 773 doi 10 1016 j jbi 2010 06 001 PMID 20541624 Bodenreider O Mitchell J A McCray A T 2003 Biomedical Ontologies Biocomputing 2004 pp 164 165 doi 10 1142 9789812704856 0016 ISBN 978 981 238 598 7 PMC 4300097 PMID 15759615 Further readingOberle D Guarino N Staab S 2009 What is an Ontology PDF Handbook on Ontologies pp 1 17 doi 10 1007 978 3 540 92673 3 0 ISBN 978 3 540 70999 2 S2CID 8522608 Fensel D van Harmelen F Horrocks I McGuinness D L Patel Schneider P F 2001 OIL an ontology infrastructure for the Semantic Web IEEE Intelligent Systems 16 2 38 45 doi 10 1109 5254 920598 Gangemi A Presutti V Ontology Design Patterns PDF Staab amp Studer 2009 permanent dead link Golemati M Katifori A Vassilakis C Lepouras G Halatsis C 2007 Creating an Ontology for the User Profile Method and Applications PDF Proceedings of the First IEEE International Conference on Research Challenges in Information Science RCIS Morocco 2007 CiteSeerX 10 1 1 74 9399 Archived from the original PDF on 2008 12 17 Mizoguchi R 2004 Tutorial on ontological engineering Part 3 Advanced course of ontological engineering PDF New Gener Comput 22 193 220 doi 10 1007 BF03040960 S2CID 23747079 Archived from the original PDF on 2013 03 09 Retrieved 2009 06 08 Gruber T R 1993 A translation approach to portable ontology specifications PDF Knowledge Acquisition 5 2 199 220 CiteSeerX 10 1 1 101 7493 doi 10 1006 knac 1993 1008 S2CID 15709015 Maedche A Staab S 2001 Ontology learning for the Semantic Web IEEE Intelligent Systems 16 2 72 79 doi 10 1109 5254 920602 S2CID 1411149 Noy Natalya F McGuinness Deborah L March 2001 Ontology Development 101 A Guide to Creating Your First Ontology Stanford Knowledge Systems Laboratory Technical Report KSL 01 05 Stanford Medical Informatics Technical Report SMI 2001 0880 Archived from the original on 2010 07 14 Chaminda Abeysiriwardana Prabath Kodituwakku Saluka R 2012 Ontology Based Information Extraction for Disease Intelligence International Journal of Research in Computer Science 2 6 7 19 arXiv 1211 3497 Bibcode 2012arXiv1211 3497C doi 10 7815 ijorcs 26 2012 051 inactive 8 December 2024 S2CID 11297019 a href wiki Template Cite journal title Template Cite journal cite journal a CS1 maint DOI inactive as of December 2024 link Razmerita L Angehrn A Maedche A 2003 Ontology Based User Modeling for Knowledge Management Systems User Modeling 2003 Lecture Notes in Computer Science Vol 2702 Springer pp 213 7 CiteSeerX 10 1 1 102 4591 doi 10 1007 3 540 44963 9 29 ISBN 3 540 44963 9 Soylu A De Causmaecker Patrick 2009 Merging model driven and ontology driven system development approaches pervasive computing perspective Proceedings of the 24th International Symposium on Computer and Information Sciences pp 730 5 doi 10 1109 ISCIS 2009 5291915 ISBN 978 1 4244 5021 3 S2CID 2267593 Smith B 2008 Ontology Science In Eschenbach C Gruninger M eds Formal Ontology in Information Systems Proceedings of FOIS 2008 ISO Press pp 21 35 CiteSeerX 10 1 1 681 2599 Staab S Studer R eds 2009 What is an Ontology Handbook on Ontologies 2nd ed Springer pp 1 17 doi 10 1007 978 3 540 92673 3 0 ISBN 978 3 540 92673 3 S2CID 8522608 Uschold Mike Gruninger M 1996 Ontologies Principles Methods and Applications Knowledge Engineering Review 11 2 93 136 CiteSeerX 10 1 1 111 5903 doi 10 1017 S0269888900007797 S2CID 2618234 Pidcock W What are the differences between a vocabulary a taxonomy a thesaurus an ontology and a meta model Archived from the original on 2009 10 14 Yudelson M Gavrilova T Brusilovsky P 2005 Towards User Modeling Meta ontology User Modeling 2005 Lecture Notes in Computer Science Vol 3538 Springer pp 448 452 CiteSeerX 10 1 1 86 7079 doi 10 1007 11527886 62 ISBN 978 3 540 31878 1 Movshovitz Attias Dana Cohen William W 2012 Bootstrapping Biomedical Ontologies for Scientific Text using NELL PDF Proceedings of the 2012 Workshop on Biomedical Natural Language Processing Association for Computational Linguistics pp 11 19 CiteSeerX 10 1 1 376 2874 External linksWikimedia Commons has media related to Ontology Scholia has a topic profile for Ontology information science Knowledge Representation at Open Directory Project Library of ontologies Archive Unmaintained GoPubMed using Ontologies for searching ONTOLOG a k a Ontolog Forum an Open International Virtual Community of Practice on Ontology Ontological Engineering and Semantic Technology Use of Ontologies in Natural Language Processing Ontology Summit an annual series of events first started in 2006 that involves the ontology community and communities related to each year s theme chosen for the summit Standardization of Ontologies