Assessing Conceptual Similarity to Support Concept Mapping
(pdf
)
David B. Leake, Ana Maguitman, and Alberto Cañas.
Proceedings of the Fifteenth International Florida Artificial
Intelligence Research Society Conference. AAAI Press, Menlo
Park, 2001, pp. 186-172. 5 pages.
Abstract
Concept maps capture knowledge about the concepts and concept
relationships in a domain, using a two-dimensional visually-based
representation. Computer tools for concept mapping empower experts to
directly construct, navigate, share, and criticize rich knowledge
models. This paper describes ongoing research on augmenting concept
mapping tools with systems to support the user by proactively
suggesting relevant concepts and associated resources (e.g., images,
video, and text pages) during concept map creation. Providing such
support requires efficient and effective algorithms for judging
concept similarity and the relevance of prior concepts to new concept
maps. We discuss key issues for such algorithms and present four new
approaches developed for assessing conceptual similarity for concepts
in concept maps. Two use precomputed summaries of structural and
correlational information to determine the relevance of stored
concepts to selected concepts in a new concept map, and two use
information about the context in which the selected concept appears.
We close by discussing their tradeoffs and their relationships to
research in areas such as information retrieval and analogical
reasoning.
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