Topic Extraction and Extension to Support Concept Mapping
(pdf
)
David B. Leake, Ana Maguitman, and Thomas Reichherzer.
Proceedings of the Sixteenth International
Florida Artificial Intelligence Research Society Conference
(FLAIRS-2003), AAAI Press, 2003, pp. 325-329
Abstract
Successful knowledge management may depend not only on knowledge
capture, but on knowledge construction---on formulating new and useful
knowledge that was not previously available. Electronic concept
mapping tools are a promising method for supporting knowledge capture
and construction, but users may find it difficult to determine the
right knowledge to include. Consequently, knowledge-based methods for
suggesting relevant information are desirable for supporting the
knowledge modeling process. We are developing methods to aid concept
mapping by suggesting relevant information to compare, contrast, and
possibly include in knowledge models represented as concept maps.
This paper presents two specific methods we are developing for this
task, both of which automatically identify topics related to a concept
map in order to guide the retrieval of related information. The
first, DISCERNER, automatically organizes concept map libraries into a
hierarchical structure of topic categories and subcategories that are
used as indices for efficient access to relevant stored concept maps.
The second, EXTENDER, characterizes the topics of concept maps under
construction, applies clustering techniques to the resulting
information, and performs incremental web-mining for new but related,
topics. It suggests these topics as potential areas for extending the
existing concept map or to include in new maps to increase current
knowledge coverage.
See
http://www.cs.indiana.edu/~leake/INDEX.html
for additional publications in the
Artificial Intelligence/Cognitive Science report and reprint
archive maintained by
David Leake.