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A Review of Feature Selection and Feature Extraction Methods Applied on Microarray Data

机译:应用于微阵列数据的特征选择和特征提取方法综述

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We summarise various ways of performing dimensionality reduction on high-dimensional microarray data.Many different feature selection and feature extraction methods exist and they are being widely used. All these methods aim to remove redundant and irrelevant features so that classification of new instances will be more accurate. A popular source of data is microarrays, a biological platform for gathering gene expressions. Analysing microarrays can be difficult due to the size of the data they provide. In addition the complicated relations among the different genes make analysis more difficult and removing excess features can improve the quality of the results. We present some of the most popular methods for selecting significant features and provide a comparison between them. Their advantages and disadvantages are outlined in order to provide a clearer idea of when to use each one of them for saving computational time and resources.
机译:我们总结了对高维微阵列数据进行降维的各种方法,存在许多不同的特征选择和特征提取方法,它们被广泛使用。所有这些方法旨在消除冗余和不相关的功能,以使新实例的分类更加准确。流行的数据来源是微阵列,一种用于收集基因表达的生物学平台。由于微阵列提供的数据量大,可能难以分析。此外,不同基因之间的复杂关系使分析更加困难,去除多余特征可以提高结果的质量。我们介绍了一些用于选择重要功能的最流行方法,并提供了它们之间的比较。概述了它们的优缺点,以便为何时使用它们中的每一个节省计算时间和资源提供更清晰的思路。

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