Visualization of clusters in very large rectangular dissimilarity data

Laurence A. F. Park, James C. Bezdek, Christopher A. Leckie

Research output: Chapter in Book / Conference PaperConference Paper

Abstract

D is an m×n matrix of pairwise dissimilarities between m row objects Or and n column objects Oc, which, taken together, comprise m+n objects O = {o1,"¦om,om+1,"¦om+n]. There are four clustering problems associated with O: (P1) amongst the row objects Or; (P2) amongst the column objects Oc; (P3) amongst the union of the row and column objects O=Or∪Oc; and (P4) amongst the union of the row and column objects that contain at least one object of each type (co-clusters). The coVAT algorithm, which builds images for visual assessment of clustering tendency for these problems, is limited to m×n ≈ O(104×104). We develop a scalable version of coVAT that approximates coVAT images when D is very large. Two examples are given to illustrate and evaluate the new method.
Original languageEnglish
Title of host publicationICARA 2009 : 4th International Conference on Autonomous Robots and Agents (10-12 Feb. 2009)
PublisherI.E.E.E.
Pages251-256
Number of pages6
ISBN (Print)9781424427123
Publication statusPublished - 2010
EventICARA 2009 : International Conference on Autonomous Robots and Agents -
Duration: 1 Jan 2010 → …

Conference

ConferenceICARA 2009 : International Conference on Autonomous Robots and Agents
Period1/01/10 → …

Keywords

  • visualization
  • data

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