1 / 23

Applying Belief Change to Ontology Evolution

Applying Belief Change to Ontology Evolution. Giorgos Flouris. PhD Student Computer Science Department University of Crete fgeo@csd.uoc.gr. PhD Thesis Summary. Research Assistant Institute of Computer Science FORTH fgeo@ics.forth.gr. ISWDS 05 07/11/05. Part  Overview (“Elevator Talk”).

sachi
Download Presentation

Applying Belief Change to Ontology Evolution

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Applying Belief Change to Ontology Evolution Giorgos Flouris PhD StudentComputer Science DepartmentUniversity of Cretefgeo@csd.uoc.gr PhD Thesis Summary Research AssistantInstitute of Computer ScienceFORTHfgeo@ics.forth.gr ISWDS 0507/11/05

  2. Part Overview(“Elevator Talk”)

  3. Ontology Evolution and Belief Change • We propose a different viewpoint on ontology evolution: • Addressing the problem of ontology evolution using techniques from belief change • In particular: • AGM theory of contraction • In ontologies represented using some DL or OWL flavor

  4. Logics (under Tarski’s model) AGM-compliantlogics AGM Class Summary of Results DLs(CVA) Base-AGM-compliantlogics OWL DLs(OVA) DLs

  5. Part Research Description

  6. Ontology Evolution:Definition and Importance • Ontology evolution is the process of modifying an ontology in response to a certain change in the domain or its conceptualization • Main reasons for ontology evolution: • Dynamic domains • Change in users’ needs or perspective • New information (previously unknown, classified or unavailable) that improves the conceptualization • Errors during original conceptualization • Ontology dependency • …

  7. Current Approaches User: , , ,  System: ,  Output Ontology Input Ontology Ontology Evolution Change Capturing  “penguins can’t fly” Penguin⊑Fly Change Representation Semantics of Change  Add_IsA(…) Implementation Change Propagation  Success Validation  Fail

  8. Limitations • Main limitations of current approaches: • Manual or semi-automatic approaches • Too many operators (complex and atomic) • No formal semantics • Cause problems: • Automated agents and systems • Scalability • Formal properties unknown • Bottleneck for current research

  9. Output Ontology Proposed Approach Input Ontology User:  System: , , , ,  Ontology Evolution Change Capturing  “penguins can’t fly” Penguin⊑Fly Change Representation Semantics of Change  Add_IsA(…) Implementation Change Propagation  Success Validation  Fail

  10. Why Belief Change?(1/2) • Knowledge should be up-to-date: • Keeping KBs up-to-date: belief change • Keeping ontologies up-to-date: ontology evolution • Ontology evolution can be viewed as a special case of belief change: • View belief change techniques, ideas, intuitions, results, algorithms and methods under the prism of ontology evolution • We address ontology evolution using belief change

  11. Why Belief Change?(2/2) • Belief change properties: • Mature • Formal • Automatic • Addresses important issues that have not been considered in ontology evolution: • Revision and Update • Revision and Contraction • Postulations vs Explicit Constructions • Foundational vs Coherence Theories • Principle of Minimal Change • Principle of Primacy of New Information

  12. Difficulties and Methodology • Belief change techniques are generally targeted at classical logic: • Their assumptions fail for DLs and other ontological languages • Cannot be directly used for such logics • But: the underlying intuitions are applicable • Belief change techniques need to be migrated to the ontology evolution context • PhD, Phase 1: • Set the foundations for future work on the subject • Very abstract, long-term and ambitious goal

  13. A More Specific Approach:the AGM Theory • For the purposes of this PhD, we restricted ourselves to deal with: • The most influential belief change theory (AGM theory) • The most fundamental operation (contraction) • The most promising languages for ontological representation (DLs and OWL) • PhD, Phase 2: • Study the applicability of the AGM theory of contraction in DLs and OWL

  14. AGM Theory • AGM theory (Alchourron, Gärdenfors, Makinson): • The most influential approach in belief change • Contraction: • The most fundamental operation for theoretical purposes • Deals with the removal of knowledge from a KB • Main contribution: 6 AGM postulates that determine whether a contraction operator behaves “rationally” • AGM theory is based on certain assumptions on the underlying logic, so, as usual: • Intuitions applicable in ontologies • Postulates and results not applicable in ontologies

  15. AGM-Compliance • Dropped the AGM assumptions and considered the class of logics studied by Tarski: • Very general class of logics (that contains DLs) • We generalized the AGM theory (and postulates) to be applicable to Tarski’s class • Noticed that only some of the logics in this class admit an operator satisfying the generalized postulates (i.e., a “rational” operator): • Termed AGM-compliant logics (3 characterizations)

  16. Logics (under Tarski’s model) AGM-compliantlogics AGM Class Results(AGM-Compliance)

  17. Further Results • Connection with lattice theory: • Every logic can be described by a lattice • AGM-compliance can be determined by the lattice’s structure • Connection with the foundational model: • AGM theory based on the coherence model • There are logics in which a “foundational AGM theory” can be applied • Termed base-AGM-compliant logics (2 characterizations)

  18. Logics (under Tarski’s model) AGM-compliantlogics AGM Class Results(Base-AGM-Compliance) Base-AGM-compliantlogics

  19. AGM-Compliance and DLs • Studied DLs (two types) • CVA (Closed Vocabulary Assumption): allows the description of the ontological signature using DL axioms • OVA (Open Vocabulary Assumption): ignores the signature because it cannot be described using DL axioms • DLs (CVA): non-AGM-compliant • DLs (OVA): some are AGM-compliant, some are not • Introduced results, heuristics, rules of thumb • OWL (different flavors, CVA or OVA, annotation features, owl:imports): all non-AGM-compliant

  20. Logics (under Tarski’s model) AGM-compliantlogics AGM Class Results(AGM-Compliance and DLs) DLs(CVA) Base-AGM-compliantlogics OWL DLs(OVA)

  21. Partial List of DLs (OVA)

  22. Conclusion • Phase 1: • Proposed the study of ontology evolution from a different perspective, using belief change ideas and terminology • Phase 2: • Focused on the AGM theory of contraction • Determined its applicability to DLs and OWL

  23. Future Work • Study other belief change approaches • Connection of AGM-compliance with other AGM-related results: • The operation of revision • Levi identity • Representation theorems • The development and/or implementation of a specific algorithm for integration into ontology evolution tools

More Related