DocumentCode :
2442118
Title :
A Game Theoretic Approach to Active Distributed Data Mining
Author :
Zhang, Xiaofeng ; Cheung, William K.
Author_Institution :
Hong Kong Baptist Univ., Kowloon
fYear :
2007
fDate :
2-5 Nov. 2007
Firstpage :
109
Lastpage :
115
Abstract :
Learning-from-abstraction (LFA) is a recently proposed model-based distributed data mining approach which aims to the mining process both scalable and privacy preserving. However how to set the right trade-off between the abstraction levels of the local data sources and the global model accuracy is crucial for getting the optimal abstraction, especially when the local data are inter-correlated to different extents. In this paper, we define the optimal abstraction task as a game and compute the Nash equilibrium as its solution. Also, we propose an iterative version of the game so that the Nash equilibrium can be computed by actively exploring details from the local sources in a need-to-know manner. We tested the proposed game theoretic approach using a number of data sets for model-based clustering with promising results obtained.
Keywords :
data mining; game theory; Nash equilibrium; active distributed data mining; game theoretic approach; global model accuracy; learning-from-abstraction; model-based distributed data mining approach; optimal abstraction task; Computer science; Cost function; Data mining; Data privacy; Distributed decision making; Game theory; Intelligent agent; Nash equilibrium; Protection; Testing; Distributed data mining; active learning; game theory; privacy preservation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Agent Technology, 2007. IAT '07. IEEE/WIC/ACM International Conference on
Conference_Location :
Fremont, CA
Print_ISBN :
978-0-7695-3027-7
Type :
conf
DOI :
10.1109/IAT.2007.82
Filename :
4407270
Link To Document :
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