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A new multi-objective differential evolution approach for simultaneous clustering and feature selection

机译:同时聚类和特征选择的多目标差分进化新方法

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摘要

Today's real-world data mostly involves incomplete, inconsistent, and/or irrelevant information that causes many drawbacks to transform it into an understandable format. In order to deal with such issues, data preprocessing is a proven discipline in data mining. One of the typical tasks in data preprocessing, feature selection aims to reduce the dimensionality in the data and thereby contributes to further processing. Feature selection is widely used to enhance the performance of a supervised learning algorithm (e.g., classification) but is rarely used in unsupervised tasks (e.g., clustering). This paper introduces a new multi-objective differential evolution approach in order to find relatively homogeneous clusters without the prior knowledge of cluster number using a smaller number of features from all available features in the data. To analyze the goodness of the introduced approach, several experiments are conducted on a various number of real-world and synthetic benchmarks using a variety of clustering approaches. From the analyzes through several different criteria, it is suggested that our method can significantly improve the clustering performance while reducing the dimensionality at the same time.
机译:如今,现实世界中的数据主要包含不完整,不一致和/或不相关的信息,这些信息导致许多缺点,无法将其转换为可理解的格式。为了解决此类问题,数据预处理是数据挖掘中公认的一门学科。特征选择是数据预处理中的典型任务之一,旨在降低数据的维数,从而有助于进一步处理。特征选择被广泛用于增强监督学习算法(例如分类)的性能,但很少用于无监督任务(例如聚类)中。本文介绍了一种新的多目标差分进化方法,目的是使用数据中所有可用特征中较少的特征来找到相对均质的簇,而无需先验簇数。为了分析引入的方法的优点,使用各种聚类方法在各种现实和综合基准上进行了一些实验。通过对几种不同标准的分析,表明我们的方法可以显着提高聚类性能,同时降低维数。

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