Presentation Transcript
Issues in Negotiating Multiple Semantic Models : Issues in Negotiating Multiple Semantic Models LeeEllen Friedland
Center for Integrated Intelligence Systems
The MITRE Corporation
lfriedland@mitre.org
April 28, 2004
The Semantic Web : The Semantic Web Vision
To provide 'a common framework that allows data to be shared and reused across application, enterprise, and community boundaries.' (W3C)
Semantic models are key
Different types of models
Classification systems, taxonomies, thesauri, topic maps, ontologies, etc.
Different ways to represent these models in machine-usable form
Formally expressed
Standards-conformant
Semantic Models : Semantic Models Where do semantic models come from?
More Questions About Semantic Models : More Questions About Semantic Models Are they already being used in this (mostly) pre-Semantic Web world?
How do you create models in areas where there are none?
How do you decide what type of models to create for different purposes?
How do you know if you have the models you need?
How do you judge whether a model is correct?
How can you be sure a model will work with a specific application or serve a certain goal?
Are there different requirements for models to be used in different contexts?
What do you do if you have legacy models that need to be updated?
What do you do when you have legacy models and you also have to create new ones?
Key Issues : Key Issues Understanding semantic information models
How semantic information models are used in context
Strategies for negotiating environments in which multiple heterogeneous models coexist
Understanding these issues provides a foundation for Semantic Web applications
The Importance of Models : The Importance of Models Semantic Web is new
Semantic models are not
Semantic models are used throughout everyday life
Semantic models are used throughout work activities
Semantic models are not about IT applications
They represent the way people think about the things they know and how they make sense of the universe
Why does this matter?
People versus IT? : People versus IT? Framework for working with Semantic Models
#1 - Cultural and social contexts
Concepts and relationships must reflect real-world values and beliefs
Authenticity, fidelity
#2 - Content-centric
Models must reflect the expert knowledge and judgment of specialists
Domain expertise
Two Perspectives Are Needed : Two Perspectives Are Needed Information management / content management
Content inventory, user requirements, lifecycle management requirements, metadata design, controlled vocabularies, semantic models (classification systems, taxonomies, thesauri, topic maps, ontologies, etc.)
Cultural / social (ethnographic approach)
Values, attitudes, beliefs, customs, work culture, work practice, social interaction, etc.
Background in IT area is helpful, but often not essential
Provides context for some future use
Semantic Models should be created and managed over time independent of IT implementation(s)
Semantic Models at the IRS : Semantic Models at the IRS IRS Electronic Tax Administration
Public Portal Branch
IRS.gov
Content management system
eGovernment initiatives
E-Government Act of 2002 (H.R. 2458/S. 803)
Executive owner
Partner
MITRE developed a Metadata Strategy and Plan (Spring 2003)
Based on domain metadata meetings with 15 business units, over 60 staff members
IRS.gov subject taxonomy and thesaurus
Enhancement and upgrading of content management program *The views expressed here are those of the author and are not necessarily in accordance with the views of the Government.
The Semantic Landscape : The Semantic Landscape
A variety of Semantic Models in use, for example:
Legacy taxonomies
Uniform Issue List (Office of Chief Counsel)
'Index Entry Terms' (Forms and Publications)
Internal Revenue Manual Index (SPDER)
Taxonomies proposed or in development
eLearning
eFOIA
Topic Map pilot (Multimedia / ETLA)
The Hidden Semantic Landscape : The Hidden Semantic Landscape Hidden in plain sight
Semantic models in widespread use
No one mentioned them
They had no name
They had no owner
Not documented
Ontologies
Tax Administration
Tax Law
'Master' vocabulary
The Semantic Landscape: What was Expected : The Semantic Landscape: What was Expected Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level)
The Semantic Landscape: What was Found : The Semantic Landscape: What was Found Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Domain Knowledge
(Community Level) Tax Administration Ontology Tax Law Ontology
What is the Enterprise? : What is the Enterprise? The concept of the community- or domain-level is clear
The concept of the enterprise-level is less clear and can change according to context
Are the terms 'enterprise' and 'community' adequate to express variable relationships between different levels of organizations, domains, and ontologies, and the different contexts in which Semantic Models are used? Tax Administration Ontology Tax Law Ontology
Key Characteristics Of Semantic Models in Context : Key Characteristics Of Semantic Models in Context Implicit versus explicit
Implicit Semantic Models can be well-developed and widely-used
Informal versus formal versus formally represented
When informal Semantic Models are being used successfully they, or their applications, will usually benefit from higher levels of formalization
The need to formally represent a Semantic Model is tied to the need or wish to use it in an IT context
Non-automated versus semi-automated versus optimally automated
The degree to which a Semantic Model is automated in a technology application has no bearing on its fidelity to the concepts it represents
Characteristics of IRS Semantic Models : Characteristics of IRS Semantic Models
Conclusions : Conclusions The future success of the Semantic Web is dependent on the integrity of the Semantic Models we use, represent, and implement
Complex organizations will almost certainly have legacy Semantic Models in use with varying profiles of key characteristics
Understanding the Semantic Landscape requires at least two perspectives: information management and cultural/social
Semantic Models represent concepts created and used by humans
The employment or adaptation of these models in a technology application is only one of many possible uses and therefore should be designed and managed as a distinct activity
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