科技报告详细信息
On the selection of dimension reduction techniques for scientific applications
Fan, Y J ; Kamath, C
Lawrence Livermore National Laboratory
关键词: Dimensions;    Evaluation;    97 Mathematical Methods And Computing;    Performance;   
DOI  :  10.2172/1036865
RP-ID  :  LLNL-TR-531131
RP-ID  :  W-7405-ENG-48
RP-ID  :  1036865
美国|英语
来源: UNT Digital Library
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【 摘 要 】
Many dimension reduction methods have been proposed to discover the intrinsic, lower dimensional structure of a high-dimensional dataset. However, determining critical features in datasets that consist of a large number of features is still a challenge. In this paper, through a series of carefully designed experiments on real-world datasets, we investigate the performance of different dimension reduction techniques, ranging from feature subset selection to methods that transform the features into a lower dimensional space. We also discuss methods that calculate the intrinsic dimensionality of a dataset in order to understand the reduced dimension. Using several evaluation strategies, we show how these different methods can provide useful insights into the data. These comparisons enable us to provide guidance to a user on the selection of a technique for their dataset.
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