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From General Ontology to Specific Ontology: Study of Shu-Shi Poems

From General Ontology to Specific Ontology: Study of Shu-Shi Poems. Ru-Yng Chang, Sue-ming Chang, Feng-ju Luo*, Chu-Ren Huang Academia Sinica, Yuan-Ze University*. Knowledge and Knowledge Structure Variation. Knowledge is Structured Information

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From General Ontology to Specific Ontology: Study of Shu-Shi Poems

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  1. From General Ontology to Specific Ontology: Study of Shu-Shi Poems Ru-Yng Chang, Sue-ming Chang, Feng-ju Luo*, Chu-Ren Huang Academia Sinica, Yuan-Ze University*

  2. Knowledge and Knowledge Structure Variation Knowledge is Structured Information • Most salient factors dictating variations in knowledge structures are time, space, and domain • Language is both the product and conduit of the conceptual structure of its speakers

  3. Accessing Knowledge Structure • In order to become sharable and reusable knowledge, all extracted information must first be correctly situated in a knowledge structure • The situated information must be allowed to transfer from knowledge structure to knowledge structure without losing its meaningful content

  4. Research Goal • Knowledge Structure Discovery • Knowledge as situated information • Language endows information with structure • Text-based and Lexicon-driven Knowledge Structure Discovery • General Ontology: the upper ontology shared by all domains (such as SUMO) • Specific Ontology: a ontology specific to a domain, historical period, an author etc.

  5. Research Methodology • The Mental Lexicon Approach • The Shakespearean-garden Approach • The Ontology-merging as Ontology-discovery Approach

  6. The Mental Lexicon Approach • Concepts are stored in the mental lexicon • The basic unit of mental lexicon organization and access is lexical entry • A complete list of lexical entries covers the complete list of conceptual atoms • Lexical semantic relations mirror conceptual relations Each Word is a Conceptual Atom

  7. The Shakespearean-garden Approach • A Shakespearean garden collects all the plants referred to in Shakespearean texts. • The garden is used to illustrate the flora of the Shakespearean England and gives scholars a context in which to interpret his work. • There is a knowledge structure behind each corpus (i.e. a collection of texts with design criteria) Lexicon as a Structured Inventory of Conceptual Atoms • For instance, complete set of texts by an author, from a certain period, or in a certain domain

  8. The Ontology-merging as Ontology-discovery Approach I • Ontology provides a structure for knowledge to be situated • However, there is a dilemma for the construction of a new ontology • If no existing ontology is referred to: reinventing the wheel, difficult to start a structure from scratch without rules • If existing ontology is referred to: mislead by existing structure, mismatched or erroneous

  9. The Ontology-merging as Ontology-discovery Approach II The Solution • Map conceptual atoms to two (or more) reference ontologies • Merge the two resultant ontologies • Matched Mapping: Confirmation of knowledge structure • Mismatched Mapping: Only one or neither is correct. Possibly lead to discovery of new knowledge structure • Complimentary Mapping: Increases coverage

  10. Resources used • WordNet http://www.cogsci.princeton.edu/~wn/ • SUMO Ontology http://www.ontologyportal.org • Academia Sinica Bilingual Ontological Wordnet (Sinica BOW) : SUMO + WordNet http://bow.sinica.edu.tw • Segmentation Program etc. http://LingAnchor.sinica.edu.tw/ • Domain Lexicon Management System: Segmentation, New Word Detection Lexical Database

  11. The information of Sinica BOW EX: fish • Sense • Domain • POS • Definition • Translation • Semantic relation • SUMO • Example

  12. SUMO: Suggested Upper Merged Ontology SUMO Atoms • Concepts: around 1000 Note that concepts are not necessarily linguistically realized • Relations(ISA): See SUMO Graph • Axioms: for inference • Open resource created under an initiative from IEEE Standard Upper Ontology Working Group

  13. Methodology • From lexicon to ontology (from items to structure) • Ontology discovery through ontology merging

  14. WHY? • We do not have the knowledge structure (ontology) of a new domain (historical period, field etc.) • But typical ontology discovery needs a framework to be mapped to • To solve the dilemma we map the conceptual atoms to both SUMO and WN (as a linguistic ontology)

  15. How to build a domain ontology Word segmentation WordNet Match WordNet synsetand SUMO conceptautomatically SUMO Use WordNet information to check results and extend concept Transform into ontology browser format

  16. Distribution of Shu Shi lexicon • 98,430 words in NO.1-45 volume

  17. The distribution of animal, plant, and artifact concepts in Shu Shi’s poems

  18. Concepts found in Shu Shi's but not in Tang 300 • aquatic mammal (whale 鯨*) • amphibian (frog 蛙*、toad 蟾蜍*、salamander鯢) • mollusk (clam蛤*、gastropod螺*、oyster蠔、snail蝸牛*、earthworm蚯蚓*) • crustacean (crab蟹*、shrimp蝦) Guangdong and Hainan Island

  19. Words stand for multiple concepts in the Shu Shi Poems

  20. What We Learned about Specific Ontology Constructing ontology from a larger corpus and comparison of two specific ontologies • Local information can be effectively mapped • Global information offers deeper insights into the knowledge structure • Human conceptualization of animals and plants has been relatively stable. But NOT artifacts. • Regardless of the criteria for classification, genetically determined features (behaviors, appearances etc.) do not vary greatly • However, human technology is highly fluid. Our conceptualization of artifacts is highly dependent on the development of engineering and by our varying societal needs.

  21. http://bow.sinica.edu.tw/ont/ShuShi_ont.html

  22. Example of SUMO concept

  23. Axiom in SUMO (instance GeorgeBush Human) – GeorgeBush is an instance of the class of humans (exists (?X) (parent ?X GeorgeBush)) – there exists something of which George Bush is the parent (instance parent BinaryPredicate) – the relation of parent is a binary relation (domain parent 1 Organism) – the first argument to the parent relation must be an instance of the class Organism (domain parent 2 Organism) – similarly for the second argument

  24. bird cuculiform_bird Cuckoo ani roadrunner coucal Centropus_sinensis pheasant_coucal shrub bush rhododendron azalea Example of WordNet lexical relation 杜鵑 DuJuan

  25. SUMO WordNet bird organism cuculiform_bird plant animal Cuckoo invertebrate vertebrate ani roadrunner coucal Flowering plant Centropus_sinensis pheasant_coucal warm blooded vertebrate shrub bush mammal bird rhododendron azalea SUMO + WordNet 杜鵑 DuJuan

  26. Summary and Future Work • Ontologies represent the knowledge structure of a domain or historical period • We have provided an online interface to browse ontologies and lexica • In the future, we will complete the online ontology editor and browser, which will • Map lexicon, WordNet and SUMO. • Integrate ontologies based on different texts. • Facilitate comparative studies of various domain ontologies.

  27. Towards a Workbench for Specific Ontology: Browser and Editor User login Function menu (Personal ontologies list) Browse an ontology Edit an ontology Add an ontology Logout • SUMO • SUMO • + WordNet • +concept map with lexicon • Update lexical concepts • Update mapping between WordNet synset and lexicon • Edit other information in lexicon Import text Import lexicon Word segmentation Match concept and synset automatically • Suggestion list • Missing list

  28. Constructing a Specific Ontology • Import text, or domain lexicon • Select style of writing • Select category of word list for word segmentation • Select reference ontologies to match SUMO and lexicon • Information of suggestion list • Candidate synset • Candidate synset synonyms • Explanation of candidate synset • Concept of candidate synset

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