Un-Supervised Estimation of Cluster Validity - Methods and Applications

نویسندگان

  • Erel Levine
  • Eytan Domany
  • Noam Shental
چکیده

Research conducted under the supervision of Prof. Eytan Domany November1999 1 Acknowledgments I would like to thank Professor Eytan Domany for an intriguing year. His devoted guidance and interesting suggestions had taught m e a l o t. I also wish to thank Gaddy Getz and Noam Shental for useful discussions and ideas. I really enjoyed working with them. To my family and friends I am indebted for their support and encouragement .

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تاریخ انتشار 1999