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Upper Ontology Design for Application-Based Spatial Ontologies

Upper Ontology Design for Application-Based Spatial Ontologies. Eric Little, PhD D’Youville College National Center for Ontology Research (NCOR) National Center for Multisource Information Fusion (NCMIF) Buffalo, NY USA little@dyc.edu eglittle@eng.buffalo.edu. The Structure of an Ontology.

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Upper Ontology Design for Application-Based Spatial Ontologies

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  1. Upper Ontology Design for Application-Based Spatial Ontologies Eric Little, PhD D’Youville College National Center for Ontology Research (NCOR) National Center for Multisource Information Fusion (NCMIF) Buffalo, NY USA little@dyc.edu eglittle@eng.buffalo.edu

  2. The Structure of an Ontology • Upper-Level (Formal): • Most general categories of existence (e.g., existent item, spatial region, dependent part). • This Level of the ontology is rationally driven, meaning it is the product of philosophical reasoning. • Relies on a sound metaphysical description of the world (e.g., realism).

  3. The Structure of an Ontology • Domain-Specific Level • Contains categories that are specific to a particular domain of interest (disaster, military/defense, medicine). • This level of the ontology is empirically driven, meaning it is produced by gathering expert knowledge about a given domain of interest. • The expert knowledge is used to create a consistent and comprehensive lexicon of terms.

  4. Synthesized Ontology Model

  5. Ontologies vs. Taxonomies Urban Environment Taxonomy IED Taxonomy Dirty Bomb Taxonomy ETC… Taxonomy A Taxonomy B Taxonomy C ONTOLOGY

  6. SPAN Taxonomy (Temporal Items) SNAP Taxonomy (Spatial Items) Using Knowledge Representation & Reasoning (KRR) to Conjoin Taxonomies Transcategorical Relations Represented in KRR Example: An Intentional Act is a Psychological Act that depends on an agent to instantiate it. It stands in a relation of dependence to other items such as neuro-biological states.

  7. Relating Ontology to Other Engineering Practices • Ontologies informthe design of other engineering systems (e.g., agent-based sys, decision support sys, predictive analytics, etc.) by providing a structured comprehensive picture of their domains. • Many engineering practices require a more principled basis for their design. • Engineering systems constrain the ontology by providing inputs such as: • User needs • Domain specificity • Computational tractability • If you give philosophers carte blanche, remember … fools and their $ are easily parted.

  8. Higher Level Fusion The purpose of higher level fusion is to develop probable explanations of a situation based on prior knowledge and incoming transient information to produce a coherent composite picture of the current situation along with a prediction of consequences. A dynamic situational picture is the result of reasoning about objects, attributes, aggregates, relationships and their behavior over time within a specific context. The process of building the dynamic situational picture requires formally structured and computationally tractable domain representation.

  9. What kinds of ontologies are needed for High-level fusion & STA? • Low – level fusion can be done (to a large degree) using existing tools such as OWL, Protégé, DAML - Oil, etc. • However, higher-level fusion processing is concerned with providing comprehensive and consistent descriptions of highly complex world states. • Hence we need a more “industrial strength” (cf. Musen) approach than is provided by current fusion ontologies.

  10. Relations Between Situational Objects at Different Levels of Granularity • Inter - Relationships: 1) Relationships between situational items of different types. 2) Relationships between items and aggregates of items of a different type. 3) relationships between aggregates of objects of different types • Intra - Relationships: 1) Relationships between different physical objects or their respective attributes/properties. 2) Relationships between different clusters/aggregates of objects in the same group. Physical objects – Physical objects (PO-PO) Combinations of ES (CES) – Combinations of ES Interclass Intraclass Temporal Spatial PO- Aggregates of PO Elementary Situation -Elementary situation (ES-ES) Relations Aggregates- Aggregates CES-ES Processes-Processes (process aggregation) Events-Events (event aggregation)

  11. Ontologize this… Frank White (Workshop II on Ontologies and Higher-lvl Fusion – Beaver Hollow

  12. Existing fusion ontology models often confuse various kinds of relations Temporal Relations Spatial Relations Situation Awareness (SAW) Ontology Model for Battlefield Relations (C. J. Matheus, M. M. Kokar, and K. Baclawski. (2003)

  13. It gets worse… Complex Relation Type

  14. Relationships between time points Before, At the same time, Start, Finish, Soon, Very soon, Resulting in, Initiating Relationships between time intervals Disjoint, Joint, Overlap, Inside, Equal SNAP relations Topology/ mereology Direction Distance Size Along Towards East West South North Similar Opposite Disjoint Joint Overlap Cover Reachable Unreachable Contain A part of Far Very far Near Very near Small (er) Large(r) Same Disaster Examples: “Close to a hospital” “Cluster A is larger than before” “Along the wind direction” “Distance between Clusters A and B is smaller than before” “Casualty cluster A overlaps with building cluster C” Examples of Important Relationships SPAN relations

  15. SNAP • Ontology • Spatial Items • Of Interest • SPAN • Ontology • Temporal Items • Of Interest Building Reasoning Processes with Ontologies FUSION Reasoning about relations represented in Ontology Transcategorical Ontology (Objects + Processes)

  16. Segment of SNAP Kharkiv Nuclear Facility Ontology

  17. Segment of SPAN ontology for Kharkiv Nuclear Facility

  18. Small Representative Sample of the SNAP Dis-ReO Ontology w/ CWA Bisantz, A., Rogova, G., Little, E. (2004) “On the Integration of Cognitive Work Analysis within a Multisource Information Fusion Development Methodology,” Proceedings of the Human Factors and Ergonomics Society Annual Meeting, New Orleans

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