1 / 27

OBOE: An ontology for describing & synthesizing ecological data

OBOE: An ontology for describing & synthesizing ecological data. Knowledge Representation Working Group. Ecological research. Research in ecology increasing relies on the synthesis of data (physical, chemical and biological) Problem : data are heterogeneous; details not recorded

rusin
Télécharger la présentation

OBOE: An ontology for describing & synthesizing ecological data

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. OBOE: An ontology for describing & synthesizing ecological data Knowledge Representation Working Group

  2. Ecological research • Research in ecology increasing relies on the synthesis of data (physical, chemical and biological) • Problem: data are heterogeneous; details not recorded • Metadata standards important first step, but don’t capture all necessary aspects of data content • Solution: map data and metadata to a formal model that captures their meaning (or semantics)

  3. Motivation Formal information is needed to: • Comprehensively discover data • Search for and access relevant data • Rapidly interpret, summarize and view data • Automatically integrate data • Automatically determine if data are compatible • Calculate appropriate conversions to merge data

  4. Definitions • Observation: • An assertion of the existence of an entity, by an observer (human or non-human), typically resulting in one or more measurements of characteristics of that entity. • Observations can provide context for other observations. • Entities can be biotic (e.g., animals) and abiotic (e.g., water) • Observational data: • Any recorded measurements resulting from observations

  5. Observation ? A assertion that an entity exists

  6. Entity All things concrete and conceptual

  7. Entity An extension point for domain-specific terms

  8. Measurement Observations can result in measurements of characteristics of the entity

  9. Characteristic

  10. Measurement The raw data Measurement assigns a value, via a measurement standard, to the characteristic

  11. Measurement standard All the units, scales, indices, classifications, and lists used for ‘measuring’ a characteristic

  12. Example Measuring the height (characteristic) in meters (standard) of an tree (entity)

  13. Context Observations can provide context for other observations

  14. Context Context is transitive; measurements can be made at each level of observation

  15. Model extensibility • OBOE provides a core framework for organizing domain concepts • Entities, Characteristics and Measurement Standards • Developing extensions • Units • Top-level ecological concepts (textbook parsing) • Structured controlled vocabularies (LTER)

  16. Semantic annotation

  17. Semantic annotation Example data set: the abundance of Trapeziid crabs in coral colonies (Stewart et al. 2006)

  18. Semantic annotation

  19. Semantic annotation

  20. Semantic annotation

  21. Semantic annotation

  22. Applications overview • Core OBOE ontology definitions (complete) • Semantic annotation mechanism (prototype) • Visualization of observational structures (prototype) • Semantic search and ranking (prototype) • Automated data summarization (development) • Data integration (active research & development)

  23. Semantic annotation

  24. Simple Keyword Search

  25. Broader architecture EML Semantic Annotation Scientists & other end users Metadata Editing Data Discovery Data Browsing Creation & Managementof Standard Ontologies Community-Driven (Collaboration Among Scientists & InformaticsSpecialists) Federated Metadata & Data Management Back-End System Scientists & other end users Data Discovery Data Browsing

  26. Summary • OBOE is an ontology framework for describing observations of entities, their measurements, and context • OBOE provides a structured approach for incorporating domain ontologies • OBOE is used to semantically annotate observational data • OBOE provides necessary constructs for discovering and integrating the diverse range of data

  27. Acknowledgements • Knowledge Representation Working Group • Mark Schildhauer, Matt Jones (NCEAS) • Shawn Bowers, Bertram Ludaescher, Dave Thau (UCD) • Deana Pennington (UNM) • Serguei Krivov, Ferdinando Villa (UVM) • Rich Williams (Microsoft)

More Related