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Comparative Study of Feature Subset Selection Methods for Dimensionality Reduction on Scientific Data

机译:用于科学数据降维的特征子集选择方法的比较研究

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Feature Selection(FS) is an important step to enhance the classification accuracy. Using the lazy learning classification algorithm, the feature selection methods calculate relevancy to reduce the storage. Dimensionality reduction technique on scientific data is a popular area to understand the underlying scientific knowledge in a data set, resulted from scientific experiments. This paper presents a review and systematic comparative study of methods and techniques used in scientific data mining. The performances of the techniques are compared and a meaningful direction has been arrived. It is understood that there are several techniques such as Sequential Forward Selection(SFS), Sequential Floating Forward Selection(SFFS) and Random Subset Feature Selection (RSFS) etc., which are used to minimize the storage space of the scientific data set in combination of Nearest Neighbor classifier. The paper explains these approaches by identifying various dimensionality reduction techniques to improve the performance.
机译:特征选择(FS)是提高分类精度的重要步骤。使用惰性学习分类算法,特征选择方法计算相关性以减少存储量。科学数据的降维技术是理解科学实验产生的数据集中基础科学知识的热门领域。本文对科学数据挖掘中使用的方法和技术进行了回顾和系统的比较研究。比较了这些技术的性能,并找到了有意义的方向。可以理解,有几种技术,例如顺序前向选择(SFS),顺序浮动前向选择(SFFS)和随机子集特征选择(RSFS)等,用于最小化组合的科学数据集的存储空间。最近邻分类器。本文通过识别各种降维技术来改善性能来解释这些方法。

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