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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Forward Selection Component Analysis: Algorithms and Applications
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Forward Selection Component Analysis: Algorithms and Applications

机译:前向选择成分分析:算法和应用

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摘要

Principal Component Analysis (PCA) is a powerful and widely used tool for dimensionality reduction. However, the principal components generated are linear combinations of all the original variables and this often makes interpreting results and root-cause analysis difficult. Forward Selection Component Analysis (FSCA) is a recent technique that overcomes this difficulty by performing variable selection and dimensionality reduction at the same time. This paper provides, for the first time, a detailed presentation of the FSCA algorithm, and introduces a number of new variants of FSCA that incorporate a refinement step to improve performance. We then show different applications of FSCA and compare the performance of the different variants with PCA and Sparse PCA. The results demonstrate the efficacy of FSCA as a low information loss dimensionality reduction and variable selection technique and the improved performance achievable through the inclusion of a refinement step.
机译:主成分分析(PCA)是一种功能强大且广泛使用的降维工具。但是,生成的主要成分是所有原始变量的线性组合,这通常使解释结果和根本原因分析变得困难。前向选择成分分析(FSCA)是一项最新技术,它通过同时执行变量选择和降维来克服此困难。本文首次提供了FSCA算法的详细介绍,并介绍了FSCA的许多新变种,其中包括改进步骤以提高性能。然后,我们展示了FSCA的不同应用,并比较了PCA和Sparse PCA的不同变体的性能。结果证明了FSCA作为低信息损失维数减少和变量选择技术的功效,并且通过包含优化步骤可以实现改进的性能。

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