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An Overview of Taxonomies and AI
Heather Hedden
Senior Consultant, Taxonomy and Ontology
Enterprise Knowledge, LLC
CILIP K&IM Group
Artificial Intelligence Webinar Series: The promise and the perils
30 January 2024
ENTERPRISE KNOWLEDGE
Outline
Introduction
to Taxonomies
AI for Tagging
and Classification
with Taxonomies
AI for
Taxonomy
Development
AI for
Taxonomy
Analysis and
Improvement
Taxonomies for
Supporting AI
Applications
Introduction: What is a Taxonomy?
A knowledge organization
system that is…
1. Controlled:
A kind of controlled
vocabulary, based on
unambiguous concepts, not
just words
(things, not strings).
2. Organized:
Concepts are organized in a
structure of hierarchies,
categories, or facets to
make them easier to find
and understand.
Controlled Organized
Introduction: What is a Taxonomy For?
⬢ Concepts are used to tag/categorize content to make
finding and retrieving specific content easier.
⬢ Supporting better findability than search alone.
⬢ The taxonomy is an intermediary that links users
to the desired content.
Taxonomy
implementation:
focus on
controlled
Taxonomy
implementation:
focus on
organized
Introduction: How are Taxonomies Created?
⬢ The taxonomy needs to be designed to suit both the users and the content.
Content Taxonomy Users
From Bottom Up:
⬢ Analyze the content
⬢ Conduct content audit
⬢ Extract terms from content
From Top Down:
⬢ Interview stakeholders
⬢ Brainstorm in workshops and
focus groups
⬢ Get users’ terms from search logs
AI for Tagging and Classification
⬢ Manual tagging and classification has limitations. Not scalable.
⬢ AI methods, existing since the 1990s, have become more common.
⬢ Not all “auto-tagging” uses AI. Rules can also be written to auto-tag.
⬢ Human review remains a feature.
AI-based auto-tagging and auto-classification makes matches based on a
linguistic, logical, or mathematical profile it expecets and recognizes.
Technologies Include:
⬢ Machine learning (ML) and deep neural networks: Use mathematical
analysis to find patterns that match known properties (text or images).
⬢ Named entity recognition: Matches proper nouns mentioned in text.
⬢ Semantic analysis: Locates concepts referenced within the content.
⬢ Natural language processing (NLP): Analyzes sentences.
AI for Taxonomy Development
⬢ Technologies for auto-tagging can also be used for extracting terms as candidate
concepts for a taxonomy.
⬢ Machine learning and NLP enable term extraction from a “corpus” of documents.
⬢ Extracted terms are manually reviewed to be added to the taxonomy.
⬢ Software exists as stand-alone tools or features of taxonomy management systems.
Creating hierarchical “is a” relationships can also be automated. However…
⬢ Lacking any input from users (interviews, surveys, etc.), results are not user friendly,
but may be used in non-displayed taxonomies, such as for search support/SEO.
Generative AI for Taxonomy Development
Using technologies such as ChatGPT with large language models (LLMs):
⬢ Request to put a list of terms (such as from term extraction) into categories.
⬢ Request suggested narrower concepts.
⬢ Request alternative labels (synonyms), including for certain audiences.
Do not ask ChatGPT to “create” a taxonomy. It might violate copyrights.
AI for Taxonomy Analysis and Improvement
ML, NLP, and Entity Recognition:
Corpus Analysis
⬢ Rather than extract new,
candidate terms, identify
taxonomy concepts mentioned in
the content.
⬢ Similar technology to
auto-tagging, but may use other,
similar content.
⬢ Identify high and low frequency
occurring concepts.
AI for Taxonomy Analysis and Improvement
Generative AI:
Generating SPARQL Queries
⬢ For various analysis of a
taxonomy built on SKOS
standard.
⬢ For customized reports, that
the taxonomy management
software does not provide as a
preset option.
Taxonomies Supporting AI Applications
Taxonomies support applications, including:
⬢ Enhanced search and insights
⬢ Recommendation systems
⬢ Natural language question-answering
⬢ Chatbot support
⬢ Generative AI & LLM improved results (with Retrieval Augmented Generation/RAG)
By providing:
⬢ Synonyms, homonyms, antonyms, etc. - for normalization and disambiguation
⬢ Hierarchies - for context
⬢ Components of an ontology - for domain knowledge
Which enables:
⬢ Matches based on relationships, profile and behavior
⬢ Query disambiguation
⬢ Query expansion / refinement
Resources
⬢ “The Role of Ontologies with LLMs,” (January 9, 2024) by James Midkiff, Enterprise
Knowledge Blog.
⬢ “How a Knowledge Graph Supports AI: Technical Considerations,” (September 26, 2023),
by Urmi Majumder, Enterprise Knowledge Blog.
⬢ “Expert Analysis: When should my organization use auto-tagging?,”
Part 1 (July 19, 2022) and Part 2 (December 20, 2022) by James Midkiff and Sara
Duane, Enterprise Knowledge Blog.
⬢ “ChatGPT and Generative AI for Taxonomy Development” (PPT), presented by Xia Lin,
Taxonomy Boot Camp Conference, November 7, 2023.
⬢ “ChatGPT, Taxonomist: Opportunities & Challenges in AI-Assisted Taxonomy
Development” (PPT), presented by Margie Hlava and Heather Kotula, Taxonomy Boot
Camp Conference, November 7, 2023.
⬢ “Taxonomies and ChatGPT,” (May 29, 2023), by Heather Hedden, The Accidental
Taxonomist Blog.
Q&A
Thank you for listening.
Questions?
Heather Hedden
Senior Consultant
Enterprise Knowledge, LLC
www.enterprise-knowledge.com
hhedden@enterprise-knowledge.com
www.linkedin.com/in/hedden

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Overview of Taxonomies and Artificial Intelligence

  • 1. An Overview of Taxonomies and AI Heather Hedden Senior Consultant, Taxonomy and Ontology Enterprise Knowledge, LLC CILIP K&IM Group Artificial Intelligence Webinar Series: The promise and the perils 30 January 2024
  • 2. ENTERPRISE KNOWLEDGE Outline Introduction to Taxonomies AI for Tagging and Classification with Taxonomies AI for Taxonomy Development AI for Taxonomy Analysis and Improvement Taxonomies for Supporting AI Applications
  • 3. Introduction: What is a Taxonomy? A knowledge organization system that is… 1. Controlled: A kind of controlled vocabulary, based on unambiguous concepts, not just words (things, not strings). 2. Organized: Concepts are organized in a structure of hierarchies, categories, or facets to make them easier to find and understand. Controlled Organized
  • 4. Introduction: What is a Taxonomy For? ⬢ Concepts are used to tag/categorize content to make finding and retrieving specific content easier. ⬢ Supporting better findability than search alone. ⬢ The taxonomy is an intermediary that links users to the desired content. Taxonomy implementation: focus on controlled Taxonomy implementation: focus on organized
  • 5. Introduction: How are Taxonomies Created? ⬢ The taxonomy needs to be designed to suit both the users and the content. Content Taxonomy Users From Bottom Up: ⬢ Analyze the content ⬢ Conduct content audit ⬢ Extract terms from content From Top Down: ⬢ Interview stakeholders ⬢ Brainstorm in workshops and focus groups ⬢ Get users’ terms from search logs
  • 6. AI for Tagging and Classification ⬢ Manual tagging and classification has limitations. Not scalable. ⬢ AI methods, existing since the 1990s, have become more common. ⬢ Not all “auto-tagging” uses AI. Rules can also be written to auto-tag. ⬢ Human review remains a feature. AI-based auto-tagging and auto-classification makes matches based on a linguistic, logical, or mathematical profile it expecets and recognizes. Technologies Include: ⬢ Machine learning (ML) and deep neural networks: Use mathematical analysis to find patterns that match known properties (text or images). ⬢ Named entity recognition: Matches proper nouns mentioned in text. ⬢ Semantic analysis: Locates concepts referenced within the content. ⬢ Natural language processing (NLP): Analyzes sentences.
  • 7. AI for Taxonomy Development ⬢ Technologies for auto-tagging can also be used for extracting terms as candidate concepts for a taxonomy. ⬢ Machine learning and NLP enable term extraction from a “corpus” of documents. ⬢ Extracted terms are manually reviewed to be added to the taxonomy. ⬢ Software exists as stand-alone tools or features of taxonomy management systems. Creating hierarchical “is a” relationships can also be automated. However… ⬢ Lacking any input from users (interviews, surveys, etc.), results are not user friendly, but may be used in non-displayed taxonomies, such as for search support/SEO.
  • 8. Generative AI for Taxonomy Development Using technologies such as ChatGPT with large language models (LLMs): ⬢ Request to put a list of terms (such as from term extraction) into categories. ⬢ Request suggested narrower concepts. ⬢ Request alternative labels (synonyms), including for certain audiences. Do not ask ChatGPT to “create” a taxonomy. It might violate copyrights.
  • 9. AI for Taxonomy Analysis and Improvement ML, NLP, and Entity Recognition: Corpus Analysis ⬢ Rather than extract new, candidate terms, identify taxonomy concepts mentioned in the content. ⬢ Similar technology to auto-tagging, but may use other, similar content. ⬢ Identify high and low frequency occurring concepts.
  • 10. AI for Taxonomy Analysis and Improvement Generative AI: Generating SPARQL Queries ⬢ For various analysis of a taxonomy built on SKOS standard. ⬢ For customized reports, that the taxonomy management software does not provide as a preset option.
  • 11. Taxonomies Supporting AI Applications Taxonomies support applications, including: ⬢ Enhanced search and insights ⬢ Recommendation systems ⬢ Natural language question-answering ⬢ Chatbot support ⬢ Generative AI & LLM improved results (with Retrieval Augmented Generation/RAG) By providing: ⬢ Synonyms, homonyms, antonyms, etc. - for normalization and disambiguation ⬢ Hierarchies - for context ⬢ Components of an ontology - for domain knowledge Which enables: ⬢ Matches based on relationships, profile and behavior ⬢ Query disambiguation ⬢ Query expansion / refinement
  • 12. Resources ⬢ “The Role of Ontologies with LLMs,” (January 9, 2024) by James Midkiff, Enterprise Knowledge Blog. ⬢ “How a Knowledge Graph Supports AI: Technical Considerations,” (September 26, 2023), by Urmi Majumder, Enterprise Knowledge Blog. ⬢ “Expert Analysis: When should my organization use auto-tagging?,” Part 1 (July 19, 2022) and Part 2 (December 20, 2022) by James Midkiff and Sara Duane, Enterprise Knowledge Blog. ⬢ “ChatGPT and Generative AI for Taxonomy Development” (PPT), presented by Xia Lin, Taxonomy Boot Camp Conference, November 7, 2023. ⬢ “ChatGPT, Taxonomist: Opportunities & Challenges in AI-Assisted Taxonomy Development” (PPT), presented by Margie Hlava and Heather Kotula, Taxonomy Boot Camp Conference, November 7, 2023. ⬢ “Taxonomies and ChatGPT,” (May 29, 2023), by Heather Hedden, The Accidental Taxonomist Blog.
  • 13. Q&A Thank you for listening. Questions? Heather Hedden Senior Consultant Enterprise Knowledge, LLC www.enterprise-knowledge.com hhedden@enterprise-knowledge.com www.linkedin.com/in/hedden