Matching knowledge elements in concept maps using a similarity flooding algorithm

  • Authors:
  • Byron Marshall;Hsinchun Chen;Therani Madhusudan

  • Affiliations:
  • Oregon State University, Department of Accounting, Finance, and Information Management;University of Arizona, MIS Department;University of Arizona, MIS Department

  • Venue:
  • Decision Support Systems
  • Year:
  • 2006

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Abstract

Concept mapping systems used in education and knowledge management emphasize flexibility of representation to enhance learning and facilitate knowledge capture. Collections of concept maps exhibit terminology variance, informality, and organizational variation. These factors make it difficult to match elements between maps in comparison, retrieval, and merging processes. In this work, we add an element anchoring mechanism to a similarity flooding (SF) algorithm to match nodes and substructures between pairs of simulated maps and student-drawn concept maps. Experimental results show significant improvement over simple string matching with combined recall accuracy of 91% for conceptual nodes and concept →link → concept propositions in student-drawn maps.