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Conceptual graph

A conceptual graph (CG) is a formalism for knowledge representation. In the first published paper on CGs, John F. Sowa (Sowa 1976) used them to represent the conceptual schemas used in database systems. The first book on CGs (Sowa 1984) applied them to a wide range of topics in artificial intelligence, computer science, and cognitive science.

Research branches edit

Since 1984, the model has been developed along three main directions: a graphical interface for first-order logic, a diagrammatic calculus of logics, and a graph-based knowledge representation and reasoning model.[citation needed]

Graphical interface for first-order logic edit

 
Elsie the cat is sitting on a mat

In this approach, a formula in first-order logic (predicate calculus) is represented by a labeled graph.

A linear notation, called the Conceptual Graph Interchange Format (CGIF), has been standardized in the ISO standard for common logic.

The diagram above is an example of the display form for a conceptual graph. Each box is called a concept node, and each oval is called a relation node. In CGIF, this CG would be represented by the following statement:

[Cat Elsie] [Sitting *x] [Mat *y] (agent ?x Elsie) (location ?x ?y)

In CGIF, brackets enclose the information inside the concept nodes, and parentheses enclose the information inside the relation nodes. The letters x and y, which are called coreference labels, show how the concept and relation nodes are connected. In CLIF, those letters are mapped to variables, as in the following statement:

(exists ((x Sitting) (y Mat)) (and (Cat Elsie) (agent x Elsie) (location x y)))

As this example shows, the asterisks on the coreference labels *x and *y in CGIF map to existentially quantified variables in CLIF, and the question marks on ?x and ?y map to bound variables in CLIF. A universal quantifier, represented @every*z in CGIF, would be represented forall (z) in CLIF.

Reasoning can be done by translating graphs into logical formulas, then applying a logical inference engine.

Diagrammatic calculus of logics edit

Another research branch continues the work on existential graphs of Charles Sanders Peirce, which were one of the origins of conceptual graphs as proposed by Sowa. In this approach, developed in particular by Dau (Dau 2003), conceptual graphs are conceptual diagrams rather than graphs in the sense of graph theory, and reasoning operations are performed by operations on these diagrams.

Graph-based knowledge representation and reasoning model edit

Key features of GBKR, the graph-based knowledge representation and reasoning model developed by Chein and Mugnier and the Montpellier group (Chein & Mugnier 2009), can be summarized as follows:

  • All kinds of knowledge (ontology, rules, constraints and facts) are labeled graphs, which provide an intuitive and easily understandable means to represent knowledge.
  • Reasoning mechanisms are based on graph notions, basically the classical notion of graph homomorphism; this allows, in particular, to link basic reasoning problems to other fundamental problems in computer science (e.g., problems concerning conjunctive queries in relational databases, or constraint satisfaction problems).
  • The formalism is logically founded, i.e., it has a semantics in first-order logic and the inference mechanisms are sound and complete with respect to deduction in first-order logic.
  • From a computational viewpoint, the graph homomorphism notion was recognized in the 1990s as a central notion, and complexity results and efficient algorithms have been obtained in several domains.

COGITANT and COGUI are tools that implement the GBKR model. COGITANT is a library of C++ classes that implement most of the GBKR notions and reasoning mechanisms. COGUI is a graphical user interface dedicated to the construction of a GBKR knowledge base (it integrates COGITANT and, among numerous functionalities, it contains a translator from GBKR to RDF/S and conversely).

See also edit

References edit

  • Chein, Michel; Mugnier, Marie-Laure (2009). Graph-based Knowledge Representation: Computational Foundations of Conceptual Graphs. Springer. doi:10.1007/978-1-84800-286-9. ISBN 978-1-84800-285-2.
  • Dau, F. (2003). The Logic System of Concept Graphs with Negation and Its Relationship to Predicate Logic. Lecture Notes in Computer Science. Vol. 2892. Springer.
  • Sowa, John F. (July 1976). "Conceptual Graphs for a Data Base Interface" (PDF). IBM Journal of Research and Development. 20 (4): 336–357. doi:10.1147/rd.204.0336.
  • Sowa, John F. (1984). Conceptual Structures: Information Processing in Mind and Machine. Reading, MA: Addison-Wesley. ISBN 978-0-201-14472-7.
  • Velardi, Paola; Pazienza, Maria Teresa; De' Giovanetti, Mario (March 1988). "Conceptual graphs for the analysis and generation of sentences". IBM Journal of Research and Development. 32 (2). IBM Corp. Riverton, NJ, USA: 251–267. doi:10.1147/rd.322.0251.

External links edit

  • Conceptual Graphs Home Page
  • Annual international conferences (ICCS) at DBLP
  • Conceptual Graphs on John F. Sowa's Website

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A conceptual graph CG is a formalism for knowledge representation In the first published paper on CGs John F Sowa Sowa 1976 used them to represent the conceptual schemas used in database systems The first book on CGs Sowa 1984 applied them to a wide range of topics in artificial intelligence computer science and cognitive science Contents 1 Research branches 1 1 Graphical interface for first order logic 1 2 Diagrammatic calculus of logics 1 3 Graph based knowledge representation and reasoning model 2 See also 3 References 4 External linksResearch branches editSince 1984 the model has been developed along three main directions a graphical interface for first order logic a diagrammatic calculus of logics and a graph based knowledge representation and reasoning model citation needed Graphical interface for first order logic edit nbsp Elsie the cat is sitting on a mat In this approach a formula in first order logic predicate calculus is represented by a labeled graph A linear notation called the Conceptual Graph Interchange Format CGIF has been standardized in the ISO standard for common logic The diagram above is an example of the display form for a conceptual graph Each box is called a concept node and each oval is called a relation node In CGIF this CG would be represented by the following statement Cat Elsie Sitting x Mat y agent x Elsie location x y In CGIF brackets enclose the information inside the concept nodes and parentheses enclose the information inside the relation nodes The letters x and y which are called coreference labels show how the concept and relation nodes are connected In CLIF those letters are mapped to variables as in the following statement exists x Sitting y Mat and Cat Elsie agent x Elsie location x y As this example shows the asterisks on the coreference labels x and y in CGIF map to existentially quantified variables in CLIF and the question marks on x and y map to bound variables in CLIF A universal quantifier represented every z in CGIF would be represented forall z in CLIF Reasoning can be done by translating graphs into logical formulas then applying a logical inference engine Diagrammatic calculus of logics edit Another research branch continues the work on existential graphs of Charles Sanders Peirce which were one of the origins of conceptual graphs as proposed by Sowa In this approach developed in particular by Dau Dau 2003 conceptual graphs are conceptual diagrams rather than graphs in the sense of graph theory and reasoning operations are performed by operations on these diagrams Graph based knowledge representation and reasoning model edit Key features of GBKR the graph based knowledge representation and reasoning model developed by Chein and Mugnier and the Montpellier group Chein amp Mugnier 2009 can be summarized as follows All kinds of knowledge ontology rules constraints and facts are labeled graphs which provide an intuitive and easily understandable means to represent knowledge Reasoning mechanisms are based on graph notions basically the classical notion of graph homomorphism this allows in particular to link basic reasoning problems to other fundamental problems in computer science e g problems concerning conjunctive queries in relational databases or constraint satisfaction problems The formalism is logically founded i e it has a semantics in first order logic and the inference mechanisms are sound and complete with respect to deduction in first order logic From a computational viewpoint the graph homomorphism notion was recognized in the 1990s as a central notion and complexity results and efficient algorithms have been obtained in several domains COGITANT and COGUI are tools that implement the GBKR model COGITANT is a library of C classes that implement most of the GBKR notions and reasoning mechanisms COGUI is a graphical user interface dedicated to the construction of a GBKR knowledge base it integrates COGITANT and among numerous functionalities it contains a translator from GBKR to RDF S and conversely See also editAlphabet of human thought Chunking psychology Resource Description Framework RDF SPARQL Graph Query Language Semantic networkReferences editChein Michel Mugnier Marie Laure 2009 Graph based Knowledge Representation Computational Foundations of Conceptual Graphs Springer doi 10 1007 978 1 84800 286 9 ISBN 978 1 84800 285 2 Dau F 2003 The Logic System of Concept Graphs with Negation and Its Relationship to Predicate Logic Lecture Notes in Computer Science Vol 2892 Springer Sowa John F July 1976 Conceptual Graphs for a Data Base Interface PDF IBM Journal of Research and Development 20 4 336 357 doi 10 1147 rd 204 0336 Sowa John F 1984 Conceptual Structures Information Processing in Mind and Machine Reading MA Addison Wesley ISBN 978 0 201 14472 7 Velardi Paola Pazienza Maria Teresa De Giovanetti Mario March 1988 Conceptual graphs for the analysis and generation of sentences IBM Journal of Research and Development 32 2 IBM Corp Riverton NJ USA 251 267 doi 10 1147 rd 322 0251 External links editConceptual Graphs Home Page Annual international conferences ICCS at DBLP Conceptual Graphs on John F Sowa s Website Retrieved from https en wikipedia org w index php title Conceptual graph amp oldid 1215622286, wikipedia, wiki, book, books, library,

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