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Using Ontological Contexts to Assess the
Relevance of Statements in Ontology Evolution


    Fouad Zablith, Mathieu d'Aquin, Marta Sabou, Enrico Motta

                  Knowledge Media Institute (KMi),
                     The Open University, UK
Scenario
 Domain Data:
 New Concepts   Ontology Evolution




                                                       Device



                                         Component              Computer



                           Printer                                           Tablet
                                             Monitor      Desktop
                                     Mouse                          Laptop




                                              Computer Products
                                                 Ontology
Online Ontologies for Relation Discovery




                                               Device



                                   Component            Computer


                           Mouse
                                     Monitor            Desktop
Online Ontologies for Relation Discovery
                     Component


           Printer




                                                     Device



                                         Component            Computer


                                 Mouse
                                           Monitor            Desktop
Scenario
 Domain Data:
 New Concepts   Ontology Evolution




                                                       Device



                                         Component              Computer



                           Printer                                           Tablet
                                             Monitor      Desktop
                                     Mouse                          Laptop




                                              Computer Products
                                                 Ontology
Scenario
 Domain Data:
 New Concepts   Ontology Evolution




                                                       Device



                                         Component              Computer



                           Printer                                           Tablet
                                             Monitor      Desktop
                                     Mouse                          Laptop




                                              Computer Products
                                                 Ontology
Scenario
 Domain Data:
 New Concepts   Ontology Evolution




                                                       Device



                                         Component              Computer



                           Printer                                           Tablet
                                             Monitor      Desktop
                                     Mouse                          Laptop


                               Engine?

                                              Computer Products
                                                 Ontology
Related Work

•  There exist many tools for consistency checking.
   However, relevance is usually left for the user

•  Existing relevance techniques based on statistical
   measures (e.g. TF.IDF) do not take the ontology into
   consideration
Relevance and Context

•  In cognitive science [1], it is acknowledged that:
    –  Information exchange between two entities requires an
       agreement on the context used
    –  “An input is relevant to an individual when it connects with
       background information he has available that yields
       conclusions that matter to him”

•  To assess the relevance of a statement, we need to look
   at the context in which it appears

•  Online ontologies can provide such a context


1. D. Sperber and D. Wilson. Relevance. 1986.
Contexts Generation




                                          Device



                              Component            Computer


                      Mouse
                                Monitor            Desktop
Process Overview



                                                Rel(s) = X
Statement




                                     Context     Relevance
                                     Analysis     Measure




               Online ontology
            Selection & Extraction
Overlap Based Approach

•  Overlap analysis is based on checking to what extend the
   statement context overlaps with the ontology context.

•  In this case, the more shared concepts the contexts have
   with respect to the size of the ontology, the more relevant
   a statement would be.

•  Overlap relevance confidence formula:
Overlap based limitations

•  The ontology structure is not taken into consideration.

•  All statements in the same context have the same
   relevance confidence e.g:

   Confoverlap(<proposal, subClass, Document>, OntoSem, SWRC) = 0.2535
   Confoverlap(<capture, subClass, Event>, OntoSem, SWRC) = 0.2535


•  Using big ontologies (e.g. Cyc) as context, would not
   reflect relevance appropriately
Pattern Based Approach

•  Identifies specific structural situations that give indication
   of relevance, supported by a confidence value. For
   example:
Pattern Based Approach

•  Identifies specific structural situations that give indication
   of relevance, supported by a confidence value. For
   example:




   Contexts: ISWC.owl vs. SWRC.owl
Experimental Data
•  We identified the patterns based on a collection of
   statements evaluated by experts in 3 domains
•  We used our ontology Evolution tool Evolva to process
   text documents and identify new statements to add to the
   ontology
 Domain       Ontology                         Corpus                    # Statements

 Academic     SWRC:                            KMi News:                 251
              http://ontoware.org/frs/         http://
              download.php/354/ swrc           news.kmi.open.ac.uk/11/
              updated v0.7.1.owl

 Fishery      Biosphere:                       Fishery                   124
              http://kmi-web06.open.ac.uk:     Website:
              8081/cupboard/ ontology/
                                               http://fishonline.org/
              Experiment1/biosphere?rdf

 Music        Music:                           Music Blog: http://       341
              http://pingthesemanticweb.com/   blog.allmusic.com/
              ontology/ mo/
              musicontology.rdfs
Experimental Data: Experts’ Evaluation
Relevance Patterns
Pattern 2



                Pattern 3




Pattern 4




            Pattern 5
Performance Measure

Experts’ Answers Interpretation:
    Relevant   =           1
    Don’t know =           0.5
    Irrelevant =           0




Examples:
<Squid, subClass, Mollusk> = {Relevant, Relevant, Don’t Know}        = 2.5
<Prawn, subClass, Arthropod> = {Relevant, Don’t know, Irrelevant} = 1.5
<Fisherman, subClass, Animal> = {Irrelevant, Irrelevant, Don’t know} = 0.5


                           $%%&'&()*2"        3/*42"5*/6"       1&'&()*2"

                      !"             $%%&'&()*+&"      1&'&()*+&"            #"
                                      ,-%&.-/'0"       ,-%&.-/'0"
Datasets Experts Evaluation


               Relevant   Irrelevant   Don’t Know
  Academic 1        9          86           5
  Academic 2       16          80           4
  Fishery          36          58           6
  Music            23          72           5
Results
What does it mean?
                          Overlap



         Random      Pattern




                               = Relevant s

                               = Irrelevant s
                               = Don’t know s
User Support
Conclusions and Future Work

•  We provide a method to assess the relevance of statements
   with respect to an ontology

•  Our pattern-based approach shows promising results,
   outperforming the baseline techniques

•  We implemented our work in Evolva, to assess the relevance
   of changes in ontology Evolution

•  Next steps:
   –    Identifying further relevance patterns
   –    Improving the selection of context from online ontologies
   –    Devising a technique for automatic threshold detection
   –    Evaluating the impact on usage within the Evolva tool
Thank you!

           @fzablith
      f.zablith@open.ac.uk
http://evolva.kmi.open.ac.uk

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Using Ontological Contexts to Assess the Relevance of Statements in Ontol…

  • 1. Using Ontological Contexts to Assess the Relevance of Statements in Ontology Evolution Fouad Zablith, Mathieu d'Aquin, Marta Sabou, Enrico Motta Knowledge Media Institute (KMi), The Open University, UK
  • 2. Scenario Domain Data: New Concepts Ontology Evolution Device Component Computer Printer Tablet Monitor Desktop Mouse Laptop Computer Products Ontology
  • 3. Online Ontologies for Relation Discovery Device Component Computer Mouse Monitor Desktop
  • 4. Online Ontologies for Relation Discovery Component Printer Device Component Computer Mouse Monitor Desktop
  • 5. Scenario Domain Data: New Concepts Ontology Evolution Device Component Computer Printer Tablet Monitor Desktop Mouse Laptop Computer Products Ontology
  • 6. Scenario Domain Data: New Concepts Ontology Evolution Device Component Computer Printer Tablet Monitor Desktop Mouse Laptop Computer Products Ontology
  • 7. Scenario Domain Data: New Concepts Ontology Evolution Device Component Computer Printer Tablet Monitor Desktop Mouse Laptop Engine? Computer Products Ontology
  • 8.
  • 9.
  • 10. Related Work •  There exist many tools for consistency checking. However, relevance is usually left for the user •  Existing relevance techniques based on statistical measures (e.g. TF.IDF) do not take the ontology into consideration
  • 11. Relevance and Context •  In cognitive science [1], it is acknowledged that: –  Information exchange between two entities requires an agreement on the context used –  “An input is relevant to an individual when it connects with background information he has available that yields conclusions that matter to him” •  To assess the relevance of a statement, we need to look at the context in which it appears •  Online ontologies can provide such a context 1. D. Sperber and D. Wilson. Relevance. 1986.
  • 12. Contexts Generation Device Component Computer Mouse Monitor Desktop
  • 13. Process Overview Rel(s) = X Statement Context Relevance Analysis Measure Online ontology Selection & Extraction
  • 14.
  • 15. Overlap Based Approach •  Overlap analysis is based on checking to what extend the statement context overlaps with the ontology context. •  In this case, the more shared concepts the contexts have with respect to the size of the ontology, the more relevant a statement would be. •  Overlap relevance confidence formula:
  • 16. Overlap based limitations •  The ontology structure is not taken into consideration. •  All statements in the same context have the same relevance confidence e.g: Confoverlap(<proposal, subClass, Document>, OntoSem, SWRC) = 0.2535 Confoverlap(<capture, subClass, Event>, OntoSem, SWRC) = 0.2535 •  Using big ontologies (e.g. Cyc) as context, would not reflect relevance appropriately
  • 17. Pattern Based Approach •  Identifies specific structural situations that give indication of relevance, supported by a confidence value. For example:
  • 18. Pattern Based Approach •  Identifies specific structural situations that give indication of relevance, supported by a confidence value. For example: Contexts: ISWC.owl vs. SWRC.owl
  • 19. Experimental Data •  We identified the patterns based on a collection of statements evaluated by experts in 3 domains •  We used our ontology Evolution tool Evolva to process text documents and identify new statements to add to the ontology Domain Ontology Corpus # Statements Academic SWRC: KMi News: 251 http://ontoware.org/frs/ http:// download.php/354/ swrc news.kmi.open.ac.uk/11/ updated v0.7.1.owl Fishery Biosphere: Fishery 124 http://kmi-web06.open.ac.uk: Website: 8081/cupboard/ ontology/ http://fishonline.org/ Experiment1/biosphere?rdf Music Music: Music Blog: http:// 341 http://pingthesemanticweb.com/ blog.allmusic.com/ ontology/ mo/ musicontology.rdfs
  • 22. Pattern 2 Pattern 3 Pattern 4 Pattern 5
  • 23. Performance Measure Experts’ Answers Interpretation: Relevant = 1 Don’t know = 0.5 Irrelevant = 0 Examples: <Squid, subClass, Mollusk> = {Relevant, Relevant, Don’t Know} = 2.5 <Prawn, subClass, Arthropod> = {Relevant, Don’t know, Irrelevant} = 1.5 <Fisherman, subClass, Animal> = {Irrelevant, Irrelevant, Don’t know} = 0.5 $%%&'&()*2" 3/*42"5*/6" 1&'&()*2" !" $%%&'&()*+&" 1&'&()*+&" #" ,-%&.-/'0" ,-%&.-/'0"
  • 24. Datasets Experts Evaluation Relevant Irrelevant Don’t Know Academic 1 9 86 5 Academic 2 16 80 4 Fishery 36 58 6 Music 23 72 5
  • 26. What does it mean? Overlap Random Pattern = Relevant s = Irrelevant s = Don’t know s
  • 28. Conclusions and Future Work •  We provide a method to assess the relevance of statements with respect to an ontology •  Our pattern-based approach shows promising results, outperforming the baseline techniques •  We implemented our work in Evolva, to assess the relevance of changes in ontology Evolution •  Next steps: –  Identifying further relevance patterns –  Improving the selection of context from online ontologies –  Devising a technique for automatic threshold detection –  Evaluating the impact on usage within the Evolva tool
  • 29. Thank you! @fzablith f.zablith@open.ac.uk http://evolva.kmi.open.ac.uk