基于gpu加速协同进化优化器的高维数据集鲁棒特征选择

Marjan Firouznia, Pietro Ruiu, G. Trunfio
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引用次数: 0

摘要

特征选择是将机器学习和知识发现技术应用于高维数据集的一个越来越重要的步骤。然而,不断增长的复杂性和数据集的规模使得特征选择越来越具有挑战性,因为选择最优的特征子集可能在计算上非常昂贵,特别是当需要一个健壮的解决方案时。为了解决这个问题,我们提出了一种基于协作协同进化优化器集成及其并行化的混合多核CPU和GPU计算方法。本文讨论了该算法在典型高维数据集上的应用。根据初步结果,所提出的框架代表了解决特征选择面临的计算挑战的有价值的工具,并且它可以潜在地应用于广泛的机器学习和知识发现任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust feature selection for high-dimensional datasets using a GPU-accelerated ensemble of cooperative coevolutionary optimizers
Feature selection is an increasingly important step in the application of machine learning and knowledge discovery techniques to high-dimensional datasets. However, the growing complexity and size of datasets have made feature selection increasingly challenging, as selecting an optimal subset of features can be computationally very expensive, especially when a robust solution is required. To address this issue, we present an approach based on ensembles of cooperative coevolutionary optimisers and its parallelisation for hybrid multi-core CPU and GPU computation. The application of the developed algorithm to some typical high-dimensional datasets is discussed in the paper. According to the preliminary results, the proposed framework represents a valuable tool for addressing the computational challenges faced in feature selection, and it can be potentially applied to a wide range of machine learning and knowledge discovery tasks.
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