Distributed fuzzy rough prototype selection for Big Data regression

2015 Annual Conference of the North American Fuzzy Information Processing Society (NAFIPS) held jointly with 2015 5th World Conference on Soft Computing (WConSC)(2015)

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摘要
Size and complexity of Big Data requires advances in machine learning algorithms to adequately learn from such data. While distributed shared-nothing architectures (Hadoop/Spark) are becoming increasingly popular to develop such new algorithms, it is quite challenging to adapt existing machine learning algorithms. In this paper, we propose a solution for big data regression, where the aim is to learn the regression model over large high-dimensional datasets. First, a new distributed implementation of the weighted kNN regression method is presented followed by a novel distributed prototype selection method based on fuzzy rough set theory. Experiments demonstrate that our implementations in Apache Spark for the proposed distributed algorithms handle the size and complexity of modern real-world datasets well. We furthermore show that application of our prototype selection method improves the regression accuracy.
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关键词
distributed fuzzy rough prototype selection,Big Data regression,machine learning algorithm,distributed shared-nothing architectures,Hadoop architecture,Apache Spark architecture,weighted kNN regression method,k-nearest neighbor regression method,prototype selection method
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