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Acceleration of Feature Subset Selection Using CUDA

机译:使用CUDA加速特征子集选择

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Rough sets have been proven to be an effective tool for feature subset selection, which is a key step in various machine learning tasks. However, this task is very time consuming. To address this problem, graphics processing unit (GPU), which is a popular device of high performance computing, is applied to accelerate a sorting-based algorithm of feature subset selection. The proposed algorithm is well designed by CUDA programming framework. To obtain great performance gain, two critical steps in rough sets based feature subset selection, which are computation of equivalence class and feature significance, are both executed on GPU. Experimental results show that the proposed algorithm is efficient and it can scale well on large data sets.
机译:粗糙集已被证明是用于特征子集选择的有效工具,这是各种机器学习任务中的关键步骤。但是,此任务非常耗时。为了解决这个问题,作为高性能计算的流行设备的图形处理单元(GPU)被用于加速特征子集选择的基于排序的算法。该算法通过CUDA编程框架进行了很好的设计。为了获得巨大的性能提升,在GPU上执行了基于粗糙集的特征子集选择的两个关键步骤,即等效类和特征重要性的计算。实验结果表明,该算法是有效的,并且可以在大型数据集上很好地扩展。

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