Hybrid Parallel Feature Subset Selection for High Dimensional Datasets

Archana Shivdas Sumant, D. Patil
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Abstract

High dimensional data analytics is emerging research field in this digital world. The gene expression microarray data, remote sensor data, medical data, image, video data are some of the examples of high dimensional data. Feature subset selection is challenging task for such data. To achieve diversity and accuracy with high dimensional data is important aspect of this research. To reduce time complexity parallel stepwise feature subset selection approach is adopted for feature subset selection in this paper. Our aim is to reduce time complexity and enhancing the classification accuracy with minimum number of selected feature subset. With this approach 88.18% average accuracy is achieved.
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高维数据集的混合并行特征子集选择
高维数据分析是数字世界中新兴的研究领域。基因表达微阵列数据、遥感数据、医疗数据、图像、视频数据都是高维数据的一些例子。对于这类数据,特征子集的选择是一项具有挑战性的任务。实现高维数据的多样性和准确性是该研究的重要方面。为了降低时间复杂度,本文采用并行逐步特征子集选择方法进行特征子集选择。我们的目标是用最少的特征子集来降低时间复杂度和提高分类精度。使用该方法,平均准确率达到88.18%。
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