Prototype selection algorithms for distributed learning
作者:
Highlights:
•
摘要
Distributed learning from data is one of the typical tasks solved by distributed data-mining techniques and is seen as a fundamental computational problem. One of the approaches suitable for distributed learning is to select, by data reduction, relevant local patterns, called also prototypes, from geographically distributed databases. Next, locally selected prototypes can be moved to other sites and merged into the global knowledge model. The paper presents three agent-based population learning algorithms for distributed learning. The proposed algorithms are based on agent collaborations in distributed prototype selection processes and on agent collaborations when the learning global model is created. The basic property of the presented algorithms is that the prototypes are selected by agent-based population learning algorithm from data clusters induced at distributed sites. The main goal of the paper is to empirically compare how the way of inducing such clusters can influence the distributed learning performance. The paper investigates the agent-based population learning algorithms used to solve distributed data reduction and gives a brief discussion of the procedures for clusters initialization. Finally, computational experiment results are shown.
论文关键词:Distributed data mining,Distributed learning,Data reduction,Instance selection
论文评审过程:Received 25 July 2009, Revised 22 November 2009, Accepted 7 January 2010, Available online 14 January 2010.
论文官网地址:https://doi.org/10.1016/j.patcog.2010.01.006