1 / 13

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, TKDE (2009)

Information-theoretic distance measures for clustering validation: Generalization and normalization. Presenter : Lin, Shu -Han Authors : Ping Luo , Hui Xiong , Guoxing Zhan, Junjie Wu, and Zhongzhi Shi. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, TKDE (2009). Outline.

etta
Download Presentation

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, TKDE (2009)

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Information-theoretic distance measures for clustering validation:Generalization and normalization Presenter : Lin, Shu-Han • Authors : Ping Luo, HuiXiong, Guoxing Zhan, Junjie Wu, andZhongzhi Shi IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING,TKDE(2009)

  2. Outline • Motivation • Objective • Methodology • Experiments • Conclusion • Comments

  3. Motivation σ :the“true”partition π:clusteringoutput • Externalcriteriaforclusteringvalidation: • Information-theoreticdistancemeasuresareusedtoComparingtheclusteringoutputwiththe“true”partition • Clusteringabilityofalgorithms:Comparedifferentclusteringalgorithms,givendataset • Clusteringdifficultyofdatasets:Comparedifferentdatasets,givenalgorithm

  4. Objectives • SinceDimension, size, sparseness of data; scales of attributes aredifferentfordifferentdatasets. • therangeofdistancemeasuresaredifferent • Todofaircomparison:distancenormalization

  5. Methodology – ConditionalEntropy π:grouplabel σ:classlabel The equality C1=C2 yields the Shannon entropy 5

  6. Methodology – Quasi-Distance σ :the“true”partition π:clusteringoutput Minimum reachable:d(π,σ)reaches its minimum over both and iffπ=σ Symmetry:d(π,σ)=d(σ,π) Triangle law:d(π,σ)+d(σ,π)≧d(σ,τ) 6

  7. Methodology – NormalizationIssue Howtogetit? 7

  8. Methodology – Computationof Theworseresultofπ(mgroups) Generateaπ0 ∈ PART(A)suchthat 8 σ:n

  9. Methodology – Computationof Thereisandifferencebetweenand 9

  10. Experiments ShannonEntropy GiniIndex Goodman-Kruskal PalEntropy 10

  11. Experiments 11

  12. Conclusions • Quasi-distance:externalmeasureforclusteringvalidation • Symmetry • Trianglelaw • Minimumreachable • Normalization:maximumvalueofadistancemeasure • Compareclusteringperformancesofanalgorithmondifferentdatasets • Thenormalizeddistancemeasuresoutperformtheoriginaldistancemeasure • NormalizedShannondistancehasbestperformanceamong4observeddistancemeasures

  13. Comments • Advantage • Ideaisintuitive • Theoreticallyanalysis • Drawback • Describewhytheythinkquasi-distanceisbetterthanDCV. • Application • ThesameuseofDCV?

More Related