Feature weighting as a tool for unsupervised feature selection
Feature selection is a popular data pre-processing step. The aim is to remove some of the features in a data set with minimum information loss, leading to a number of benefits including faster running time and easier data visualisation. In this paper we introduce two unsupervised feature selection algorithms. These make use of a cluster-dependent feature-weighting mechanism reflecting the within-cluster degree of relevance of a given feature. Those features with a relatively low weight are removed from the data set. We compare our algorithms to two other popular alternatives using a number of experiments on both synthetic and real-world data sets, with and without added noisy features. These experiments demonstrate our algorithms clearly outperform the alternatives.
Item Type | Article |
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Additional information | This document is the Accepted Manuscript version of the following article: Deepak Panday, Renato Cordeiro de Amorin, and Peter Lane, ‘Feature weighting as a tool for unsupervised feature selection’, Information Processing Letters, Vol. 129, January 2018. Under embargo. Embargo end date: 21 September 2018. Published by Elsevier. |
Keywords | algorithms, clustering, feature selection, theoretical computer science, signal processing, information systems, computer science applications |
Date Deposited | 15 May 2025 13:36 |
Last Modified | 04 Jun 2025 17:06 |