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February 2001 Gio Wiederhold Stanford University
K C An Algebraic Approach to Articulate Ontologies for Information Integration February 2001 Gio Wiederhold Stanford University 9/16/2018 Gio Wiederhold SKC 1
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What are Ontologies? Ontologies list the terms and their relationships that allow communication among partners in enterprises (in machine-readable form) Relationships determine meaning - parent, school, company Databases use ontologies during design in their E-R diagrams (Implicitly) and represent the leaf nodes in their schemas Knowledge-bases use ontologies (often implicitly) add class definition (to hold instances), constraints, and, sometimes, operations among the terms 9/16/2018 Gio Wiederhold SKC 2
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Functions of Ontologies .
Enable Precision in Understanding People = designers, implementors, users, maintainers Systems = implementors = users = maintainers Share the Cost of Knowledge Acquistion & Maintenance reuse encoded knowledge, remain up-to-date as domains change Enable Information Interoperation * Define the terms that link domains 9/16/2018 Gio Wiederhold SKC 3
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Ancestors of Ontologies .
Lexicons: collect terms used in informtion systems Taxonomies: categorize, abstract, classify terms Schemas of databases: attributes, ranges, constraints Data dictionaries: systems with multiple files, owners Object libraries: grouped attributes, inherit., methods Symbol tables: terms bound to implemented programs Domain object models: (XML DTD): interchange terms More Knowledge formalized 9/16/2018 Gio Wiederhold SKC 4
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Establishing Ontologies .
Top-down: Commonly acceptable UPPER layers Domain-specific Sharing tools Object based Bottom-up Pragmatic, TASK-specific collections Database schemas and models 9/16/2018 Gio Wiederhold SKC 5
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Heterogeneity among Domains
If interoperation involves distinct domains mismatch ensues Autonomy conflicts with consistency, Local Needs have Priority, Outside uses are a Byproduct Heterogeneity must be addressed Platform and Operating Systems Representation and Access Conventions Naming and Ontology 9/16/2018 Gio Wiederhold SKC 6
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Semantic Mismatches Information comes from many autonomous sources Differing viewpoints (by source) differing terms for similar items { lorry, truck } same terms for dissimilar items trunk(luggage, car) differing coverage vehicles (DMV, AIA) differing granularity trucks (shipper, manuf.) different scope student museum fee, Stanford Hinders use of information from disjoint sources missed linkages loss of information, opportunities irrelevant linkages overload on user or application program Poor precision when merged Still ok for web browsing , poor for business & science 9/16/2018 Gio Wiederhold SKC 7
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Need for precision Information Wall
More precision is needed as data volume increases --- a small error rate still leads to too many errors False Positives have to be investigated ( attractive-looking supplier - makes toys apparent drug-target with poor annotation ) False Negatives cause lost opportunities, suboptimal to some degree False positives = poor precision typically cost more than false negatives = poor recall data errors information quantity human limit acceptable limit human with tools? Information Wall adapted from Warren Powell, Princeton Un. 9/16/2018 Gio Wiederhold SKC 8
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Ontology Sharing Three Alternatives
Create a committee to define everybody’s terms Takes many years, until people are worn out Ignored when changes make deviation necessary Get all terms and put them into large model [ Cyc, UMLS, Federated Schemas, ] Can be rapid Ignores conflicts Hard to maintain (requires committee) Keep all Terms distinct, except where sharing Requires initial effort Empowers participants 9/16/2018 Gio Wiederhold SKC 9
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Proposed Language Solutions
Specify and define terminology usage: ontology Domain-specific ontologies XML DTD assumption Small, focused, cooperating groups high quality, some examples - genomics, arthritis, Shakespeare plays allows sharable, formal tools ongoing, local maintenance affecting users - annual updates poor interoperation, users still face inter-domain mismatches Cannot achieve globally consistency wonderful for users and their programs too many interacting sources long time to achieve, sources (UAL, BA), 3 (+ trucks), 4, … all ? costly maintenance, since all sources evolve no world-wide authority to dictate conformance 9/16/2018 Gio Wiederhold SKC 10
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An unsolved problem Common assumption in assembling and integrating distributed information resources The language used by the resources is the same Sub languages used by the resources are subsets of a globally consistent language This assumption is provably false Working towards the goal of globally consistency is 1. naïve -- the goal cannot be achieved 2. inefficient -- languages are efficient in local contexts 9/16/2018 Gio Wiederhold SKC 11
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General Ontologies? Have all the Knowledge together
simple for customers of KBs hard for owners of KBs Large KB will cover multiple domains created by a committee -- slow maintained by a committee -- costly Differences in level of abstraction -- efficiency homeowner: nail carpenter: sinker, brad, boxnail, . . . 9/16/2018 Gio Wiederhold SKC 12
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Structural Heterogeneity
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Domains and Consistency .
a domain will contain many objects the object configuration is consistent within a domain all terms are consistent & relationships among objects are consistent context is implicit No committee is needed to forge compromises * within a domain Domain Ontology Compromises hide valuable details 9/16/2018 Gio Wiederhold SKC 14
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SKC grounded definition .
Ontology: a set of terms and their relationships Term: a reference to real-world and abstract objects Relationship: a named and typed set of links between objects Reference: a label that names objects Abstract object: a concept which refers to other objects Real-world object: an entity instance with a physical manifestation 9/16/2018 Gio Wiederhold SKC 15
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Domain-specific Expertise .
Knowledge needed is huge Partition into natural domains Determine domain responsibility and authority Empower domain owners Provide tools Consider interaction Society of specialists 9/16/2018 Gio Wiederhold SKC 16
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An Ontology Algebra A knowledge-based algebra for ontologies
The Articulation Ontology (AO) consists of matching rules that link domain ontologies Intersection create a subset ontology keep sharable entries Union create a joint ontology merge entries Difference create a distinct ontology remove shared entries 9/16/2018 Gio Wiederhold SKC 17
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Sample Operation: INTERSECTION
Result contains shared terms Terms useful for purchasing Source Domain 1: Owned and maintained by Store Source Domain 2: Owned and maintained by Factory 9/16/2018 Gio Wiederhold SKC 18
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INTERSECTION support Articulation ontology Matching rules that use
terms from the 2 source domains Terms useful for purchasing Store Ontology Factory Ontology 9/16/2018 Gio Wiederhold SKC 19
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color =table(colcode)
Sample Intersections Articulation ontology matching rules : size = size color =table(colcode) style = style Ana- tomy Material inventory {...} Employees { } Machinery { } Processes { } Shoes { } Shoe Factory Shoe Store Shoes { } Customers { } Employees { } {. . . } Hard- ware foot = foot Employees Employees Nail (toe, foot) Nail (fastener) Department Store 9/16/2018 Gio Wiederhold SKC 20
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Other Basic Operations
UNION: merging entire ontologies DIFFERENCE: material fully under local control Arti- culation ontology typically prior intersections 9/16/2018 Gio Wiederhold SKC 21
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Features of an algebra Operations can be composed
Operations can be rearranged Alternate arrangements can be evaluated Optimization is enabled The record of past operations can be kept and reused 9/16/2018 Gio Wiederhold SKC 22
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Sample Processing in HPKB
What is the most recent year an OPEC member nation was on the UN security council (SC)? Related to DARPA HPKB Challenge Problem SKC resolves 3 Sources CIA Factbook ‘96 (nation) OPEC (members, dates) UN (SC members, years) SKC obtains the Correct Answer 1996 (Indonesia) Other groups obtained more, but factually wrong answers Problems resolved by SKC Factbook – a secondary source -- has out of date OPEC & UN SC lists Indonesia not listed Gabon (left OPEC 1994) different country names Gambia => The Gambia historical country names Yugoslavia UN lists future security council members Gabon 1999 needed ancillary data 9/16/2018 Gio Wiederhold SKC 23
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Interoperation via Articulation
At application definition time Match ontologies Establish articulation rules. Record the process At execution time Query rewriting Optimization based on an Ontology Algebra. For maintenance Regenerate rules using the stored formulation 9/16/2018 Gio Wiederhold SKC 24
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Semi-automatic approach
Provide library of automatic match heuristics Lexical Methods -- spelling Structural Methods -- relative graph position Reasoning-based Methods Nexus Hybrid Methods Iterative/Non-iterative Methods GUI tool to - display matches and - verify generated matches using human expert - expert can also supply matching rules 9/16/2018 Gio Wiederhold SKC 25
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Articulation Generator
Being built by Prasenjit Mitra Thesaurus OntA Context-based Word Relator Phrase Relator Driver Semantic Network (Nexus) Structural Matcher Ont1 Ont2 Human Expert 9/16/2018 Gio Wiederhold SKC 26
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Lexical Methods Preprocessing rules. -Expert-generated seed rules.
e.g., (Match O1.President O2.PrimeMinister) -Context-based preprocessing directives. Thesaurus - synonyms, relationships Distance of words as measure of relatedness. 9/16/2018 Gio Wiederhold SKC 27
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Tools to create articulations
registration Vehicle ontology Vehicle ontology sales Combine ontology graphs with expert selection based on spelling, graph matching, and a nexus derived from a dictionary (O.E.D.) Suggestions for articulations 9/16/2018 Gio Wiederhold SKC 28
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Tools to create articulations
Graph matcher for Articulation- creating Expert Vehicle ontology Transport ontology Suggestions for articulations 9/16/2018 Gio Wiederhold SKC 29
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continue from initial point
Also suggest similar terms for further articulation: by spelling similarity, by graph position by term match repository Expert response: 1. Okay 2. False 3. Irrelevant to this articulation All results are recorded Okay’s are converted into articulation rules 9/16/2018 Gio Wiederhold SKC 30
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Candidate Match Repository
Term linkages automatically extracted from 1912 Webster’s dictionary * * free, other sources have been processed. Based on processing headwords ý definitions using algebra primitives Notice presence of 2 domains: chemistry, transport 9/16/2018 Gio Wiederhold SKC 31
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Using the match repository
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Navigating the match repository
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Relative Arc Importance
PageRank (Google) limitations node oriented high rank to words with little semantic value conjunctions, articles And The prepositions, pronouns to it Relative arc importance contribution of source rank to target rank 9/16/2018 Gio Wiederhold SKC 34
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ArcRank For All source s and target t nodes in graph
sort outgoing , rank by sorted order sort incoming , rank by sorted order for each arc compute In ranking Equal values take same rank Ranks numbered consecutively 9/16/2018 Gio Wiederhold SKC 35
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All Pairs Similarity Compute similarity value for all node pairs
product of inbound arc importance vectors product of outbound arc importance vectors similarity = Similarity Matrix Initial state: nodes similar only to themselves Node substitution: terms replace similar ones Iterative convergence: bounded substitution 9/16/2018 Gio Wiederhold SKC 36
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Contents Examples Verb (Educate) Adverb (Ever)
Proper Noun (Scotland -- undefined term 9/16/2018 Gio Wiederhold SKC 37
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Examples (Verb) 9/16/2018 Gio Wiederhold SKC 38
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Examples (Adverb) 9/16/2018 Gio Wiederhold SKC 39
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Examples (Proper Noun)
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Country Graphs 9/16/2018 Gio Wiederhold SKC 41
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To be matched to 9/16/2018 Gio Wiederhold SKC 42
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Knowledge Composition
Composed knowledge for applications using A,B,C,E Articulation knowledge for U (A B) (B C) (C E) Articulation knowledge Legend: U : union U : intersection U (C E) Articulation knowledge for Knowledge resource E Knowledge resource C (A B) U U (B C) U (C D) Knowledge resource A Knowledge resource B Knowledge resource D 9/16/2018 Gio Wiederhold SKC 43
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Primitive Operations Model and Instance Constructors create object
create set Connectors match object match set Editors insert value edit value move value delete value Converters object - value object indirection reference indirection Unary Summarize -- structure up Glossarize - list terms Filter - reduce instances Extract - circumscription Binary Match - data corrobaration Difference - distance measure Intersect - schem discovery Blend - schema extension 9/16/2018 Gio Wiederhold SKC 44
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Future: exploiting the result
Avoid n2 problem of interpreter mapping as stated by Swartout as an issue in HPKB year 1 Result has links to source Processing & query evaluation is best performed within Source Domains & by their engines 9/16/2018 Gio Wiederhold SKC 45
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SKC Synopsis Research:
Reliable query answers from heterogeneous, imperfect data sources Sources: General: CIA World Factbook ‘96, UN-www, OPEC-www Webster’s Dictionary, Thesaurus, Oxford English Dictionary Topical: OPEC, BattleSpace Sensors, Logistics Servers Client: DARPA High Performance Knowledge Base project Theory: Rule-based algebra Translation & Composition primitives 9/16/2018 Gio Wiederhold SKC 46
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Domain Specialization
Knowledge Acquisition (20% effort) & Knowledge Maintenance (80% effort *) to be performed by Domain specialists Professional organizations Field teams of modest size autonomously maintainable Empowerment * based on experience with software 9/16/2018 Gio Wiederhold SKC 47
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Innovation in SKC No need to harmonize full ontologies Focus on what is critical for interoperation Rules specific for articulation Tools for creation and maintenance Maintenance is distributed to n sources to m articulation agents Potentially many sets of articulation rules is m < n2 , depends on semantic architecture density a research question 9/16/2018 Gio Wiederhold SKC 48
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Backup Viewgraphs 9/16/2018 Gio Wiederhold SKC 49
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Summary . Algebra enables Interoperation by
dealing explicitly with differences by knowledge identifying maintenance domains keeping sources autonomous Assumes domain has a common ontology composing domain ontologies requires the algebra to manage the linkages where articulation occurs processes are best executed within the domains Knowledge about articulation is disjoint allows integration specialists to work independently supports multiple intersections and views Maintenance is structured and partitioned 9/16/2018 Gio Wiederhold SKC 50
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Current Directions Experience with real world (imperfect) data confirms validity of our approach Expert sources are better maintained than general sources Rules applied to multiple sources provide more reliable and accurate query results Component architecture enables scalable, maintainable knowledge base development Developing proof of concept environment with HPKB standard knowledge base connectivity interface 9/16/2018 Gio Wiederhold SKC 51
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Components of Ontologies .
Vocabularies words as handles for classes and concepts from database schemas. textbooks, catalog indexes identified with their domain or context Relationships meaning is primarily defined through relationships Employee of a Company; Nails in a Shoe Annotations material to clarify the meaning of the terms contributed by users as well as original authors best with some examples 9/16/2018 Gio Wiederhold SKC 52
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Status September 1997 . Base HPKB funding from AFOSR
New World Vistas some industrial co-funding Prior work supported through Commercenet support for common representation, an interlingua Acquiring ontologies that are interesting to HPKB projects not trivial, I.e., represent realistic activities intersectable Logistics: DoD CIM, CIA, Cyc, . . . Starting smart students Integrating into architecture managed by TFS 9/16/2018 Gio Wiederhold SKC 53
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Information Flow for Training Initiative
sample scenarios ISI scenario language doctrine TRADOC Scenarios scenario justification scenario refinement Objectives trainer / controller mediator knowledge base aggregation/ analysis/ evaluation Requirements exercise design Legend Data collection Probe- point settings sources tasks draft 1 explosion aggregation 9/16/2018 Gio Wiederhold SKC 54
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Interlingua(s) Interlingua: Object Exchange Model OEM
Interlingua: Knowledge Interchange Format KIF Query: Knowledge Query and Manipulation Language KQML (PACKAGE :FROM ap001 :TO ap002 :CONTENT (MSG :TYPE query :CONTENT-LANGUAGE KIF :CONTENT (and (document ?a) ?t)) (eq “Jeff Ullman” ?a))) Interlingua: Object Exchange Model OEM Query : Mediator Specification Language MSL <document {<author AUTHOR> <title TITLE>}:- <biblioentry {<author AND <inproceedings {<title TITLE>}> @sybase AND Equal(AUTHOR, “Jeff Ullman”) { OID, LABEL, TYPE, VALUE } 9/16/2018 Gio Wiederhold SKC 55
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Support for KB-Algebra
Ontolingua [Gruber, Stanford KSL]: Repository for Domain Terminologies Used for mechanical design, bibliographies, catalogs LOOM USC ISI]: Classification-based Expert System Helps in structuring and processing ontologies PROTÉGÉ Stanford MIS] Reuse Penguin [Barsalou, Stanford MIS, CIFE]: Object manipulation based on Relational Algebra Used for genetics laboratory, building design 9/16/2018 Gio Wiederhold SKC 56
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