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Mining Local Data Sources For Learning Global Cluster Models

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This paper appears in:
Web Intelligence, 2004. WI 2004. Proceedings. IEEE/WIC/ACM International Conference on
Date of Conference: 20-24 Sept. 2004
Author(s): Chak-Man Lam
Hong Kong Baptist University
Xiao-Feng Zhang ;  Cheung, W.K.
Page(s): 748 - 751
Product Type: Conference Publications

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Abstract

Distributed data mining has been a topic getting more important nowadays as there are many cases where physically sharing of data is probibited, e.g., due to huge data volume or data privacy. In this paper, we are interested in learning a global cluster model by exploring data in distributed sources. A methodology based on periodic model exchange and merge is proposed and applied to hyperlinked Web pages analysis. In addition, we have tested a number of variations of the basic idea, including putting more emphasis on the privacy concern and testing the effect of having different numbers of distributed sources. Experimental results show that the proposed distributed learning scheme is effective with accuracy close to the case with all the data physically shared for the learning.

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