维数降维与分类方法综述

Nebu Varghese, V. Verghese, N. Jaisankar, Tech Student
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引用次数: 24

摘要

通常采用所选技术下的任意一种规定方法来实现特征空间的降维。特征选择和特征提取是上述两种降维技术,前者放弃了某些可能在以后阶段有用的特征,而后者将其特征重构为更简单的维度,从而保留了其所有初始特征。本调查的唯一目的是提供对目前存在的不同降维技术的充分理解,并根据每种算法的使用统计数据,根据给定的参数集和所描述的不同条件,介绍任何一种规定方法的适用性。本文还提出了指导方针,其中,当出现两种或多种算法可能适合执行上述任务的情况时,可以很容易地确定为特定实例选择最佳算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A SURVEY OF DIMENSIONALITY REDUCTION AND CLASSIFICATION METHODS
Dimensionality Reduction is usually achieved on the feature space by adopting any one of the prescribed methods that fall under the selected technique. Feature selection and Feature extraction being the two aforesaid techniques of reducing dimensionality, the former discards certain features that may be useful at a later stage whereas the latter re-constructs its features into a simpler dimension thereby preserving all its initial characteristics. The sole purpose of this survey is to provide an adequate comprehension of the different dimensionality reduction techniques that exist currently and also to introduce the applicability of any one of the prescribed methods depending upon the given set of parameters and varying conditions as described, under each algorithm’s usage statistics. This paper also presents guidelines where in, selection of the best possible algorithm for a specific instance can be determined with ease when a condition arises where in two or more algorithms may be suitable for executing the aforementioned task.
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