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Knowledge Architecture Process & Case Studies Tom Reamy Chief Knowledge Architect KAPS Group Knowledge Architecture Professional Services http://www.kapsgroup.com
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2 Agenda Introduction KA and Library Science – Taxonomy Development – Expertise Location, Collaboration Tale of Two Taxonomies – Best of Times and Worst of Times Conclusion
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3 Taxonomy Development Process Foundation – Strategic & Business Context – Info problems, political environment – support, special interests Knowledge Architecture Audit – Knowledge Map Taxonomy Strategy/Model – forms, technology, people – Existing taxonomic resources, software Draft Taxonomy – Information Interviews, focus groups, card sorts – Content Analysis, top down & bottom up – Refine, feedback, pilot app Taxonomy Plans – Governance, Maintenance, Applications
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4 Knowledge Architecture Audit: Knowledge Map Project Foundation Contextual Interviews Information Interviews App/Content Catalog User SurveyStrategy Document Meetings, work groups Overview High Level: Process Community Info behaviors of Business processes Technology and content All 4 dimensions Meetings, work groups General Outline Broad Context Deep Details Complete Picture New Foundation
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5 Taxonomy Development Process: Progressive Refinement Taxonomy Model Information Interviews Content Analysis RefineMap Community Governance Plan Buy/Find work groups Overview Info behaviors, Card Sorts Bottom Up Prototypes Interviews Evaluate Refine Interviews Develop, Refine General Outline Preliminary Taxonomy Taxonomy 1.0 Taxonomy 1.0-1.9 Tax 2.0Taxonomy
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6 Taxonomy Development: Taxonomy Model Enterprise Taxonomy – No single subject matter taxonomy – Need an ontology of facets or domains Standards and Customization – Balance of corporate communication and departmental specifics – At what level are differences represented? – Customize pre-defined taxonomy – additional structure, add synonyms and acronyms and vocabulary Enterprise Facet Model: – Actors, Events, Functions, Locations, Objects, Information Resources – Combine and map to subject domains
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7 Taxonomy Development: Process Combination of top down and bottom up (and Essences) – Top: Design an ontology, facet selection – Bottom: Vocabulary extraction – documents, search logs, interview authors and users – Develop essential examples (Prototypes) Most Intuitive Level – genus (oak, maple, rabbit) Quintessential Chair – all the essential characteristics, no more – Work toward the prototype and out and up and down – Repeat until dizzy or done Map the taxonomy to communities and activities – Category differences – Vocabulary differences
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8 Taxonomy Development Evaluate and Refine Formal Evaluation – Quality of corpus – size, homogeneity, representative – Breadth of coverage – main ideas, outlier ideas – Structure – balance of depth and width – Evaluate speciation steps – understandable and systematic Person – Unwelcome person – Unpleasant person - Selfish person Facetize a formal taxonomy – Look for duplications Example - Methods – chemistry, physics, social studies
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9 Taxonomy Development: Evaluate and Refine Practical Evaluation – Test in real life application – Select representative users and documents – Test node labels with Subject Matter Experts Balance of making sense and jargon – Test with representative key concepts – Test for un-representative strange little concepts that only mean something to a few people but the people and ideas are key and are normally impossible to find
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10 Enterprise Environment – Case Studies A Tale of Two Taxonomies – It was the best of times, it was the worst of times Basic Approach – Initial meetings – project planning – High level K map – content, people, technology – Contextual and Information Interviews – Content Analysis – Draft Taxonomy – validation interviews, refine – Integration and Governance Plans
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11 Enterprise Environment – Case One – Taxonomy, 7 facets Taxonomy of Subjects / Disciplines: – Science > Marine Science > Marine microbiology > Marine toxins Facets: – Organization > Division > Group – Clients > Federal > EPA – Instruments > Environmental Testing > Ocean Analysis > Vehicle – Facilities > Division > Location > Building X – Methods > Social > Population Study – Materials > Compounds > Chemicals – Content Type – Knowledge Asset > Proposals
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12 Enterprise Environment – Case One – Taxonomy, 7 facets Project Owner – KM department – included RM, business process Involvement of library - critical Realistic budget, flexible project plan Successful interviews – build on context – Overall information strategy – where taxonomy fits Good Draft taxonomy and extended refinement – Software, process, team – train library staff – Good selection and number of facets Final plans and hand off to client
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13 Enterprise Environment – Case Two – Taxonomy, 4 facets Taxonomy of Subjects / Disciplines: – Geology > Petrology Facets: – Organization > Division > Group – Process > Drill a Well > File Test Plan – Assets > Platforms > Platform A – Content Type > Communication > Presentations Issues – Not enough facets – Wrong set of facets – business not information – Ill-defined facets – too complex internal structure
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14 Enterprise Environment – Case Two – Taxonomy, 4 facets Environment Issues – Value of taxonomy understood, but not the complexity and scope – Under budget, under staffed – Location – not KM – tied to RM and software Solution looking for the right problem – Importance of an internal library staff – Difficulty of merging internal expertise and taxonomy
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15 Enterprise Environment – Case Two – Taxonomy, 4 facets Project Issues – Project mind set – not infrastructure – Wrong kind of project management Special needs of a taxonomy project Research Issues – Not enough research – and wrong people – Misunderstanding of research – wanted tinker toy connections Interview 1 implies conclusion A
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16 Taxonomy Development Conclusion: Risk Factors Political-Cultural-Semantic Environment – Not simple resistance - more subtle – re-interpretation of specific conclusions and sequence of conclusions / Relative importance of specific recommendations Understanding project scope Access to content and people – Enthusiastic access Importance of a unified project team – Working communication as well as weekly meetings
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17 Conclusion: Lessons for Librarians Size Matters – but bigger is not better No single enterprise taxonomy Faceted taxonomies – expose different parts to different groups Corporate taxonomies are not like Dewey decimal system – Taxonomy not a classification – Smaller – easier to use – Get breadth of coverage with facets not single subject taxonomy
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18 Conclusion: Lessons for Librarians Information Architecture Lessons Focus on user – Developing classification for novice and infrequent user – Usability – develop understanding and different relationships – continuous monitoring and refining No right way to categorize – understand variations There is no shelf – equal numbers of categories not books in each category Focus on applications and usability
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19 Conclusion: Lessons for Librarians Expand You World Cognitive Science – Modeling how people think, categorize Business Activities – Information behaviors within context of business acitvities Technology – CM – metadata – standards and implementation – Search – facets + taxonomy + best bets + – Text Analytics – learn to develop categorization rules – Taxonomy Management Software - necessary
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20 General Conclusion: Taxonomy Development Taxonomy development is not just a project – It has no beginning and no end Taxonomy development is not an end in itself – It enables the accomplishment of many ends Taxonomy development is not just about search or browse – It is about language, cognition, and applied intelligence Strategic Vision (articulated by K Map) is important – Even for your under the radar vocabulary project Paying attention to theory is practical – So is adapting your language to business speak
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21 General Conclusions – KA and Library Knowledge Architecture – new foundation for KM – Key is models of knowledge Knowledge Architecture – new direction for librarians – A Key is expanding into the organization – business value – A Key is focus on users – IA + cognitive science Big Issues: – External and Internal resources – balance of partnering and extending each group Knowledge Architecture is a bridge between KM and Library Science
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Questions? Tom Reamy tomr@kapsgroup.com KAPS Group Knowledge Architecture Professional Services http://www.kapsgroup.com
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