Clustering Categorical Data Using Community Detection Techniques

With the advent of the k-modes algorithm, the toolbox for clustering categorical data has an efficient tool that scales linearly in the number of data items. However, random initialization of cluster centers in k-modes makes it hard to reach a good clustering without resorting to many trials. Recent...

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Main Author: Huu Hiep Nguyen
Format: Article
Language:English
Published: Hindawi Limited 2017-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2017/8986360
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spelling doaj-aac5f357742e4c2495912f0f7148e8c82020-11-24T20:55:08ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52651687-52732017-01-01201710.1155/2017/89863608986360Clustering Categorical Data Using Community Detection TechniquesHuu Hiep Nguyen0Institute of Research and Development, Duy Tan University, P809 7/25 Quang Trung, Danang 550000, VietnamWith the advent of the k-modes algorithm, the toolbox for clustering categorical data has an efficient tool that scales linearly in the number of data items. However, random initialization of cluster centers in k-modes makes it hard to reach a good clustering without resorting to many trials. Recently proposed methods for better initialization are deterministic and reduce the clustering cost considerably. A variety of initialization methods differ in how the heuristics chooses the set of initial centers. In this paper, we address the clustering problem for categorical data from the perspective of community detection. Instead of initializing k modes and running several iterations, our scheme, CD-Clustering, builds an unweighted graph and detects highly cohesive groups of nodes using a fast community detection technique. The top-k detected communities by size will define the k modes. Evaluation on ten real categorical datasets shows that our method outperforms the existing initialization methods for k-modes in terms of accuracy, precision, and recall in most of the cases.http://dx.doi.org/10.1155/2017/8986360
collection DOAJ
language English
format Article
sources DOAJ
author Huu Hiep Nguyen
spellingShingle Huu Hiep Nguyen
Clustering Categorical Data Using Community Detection Techniques
Computational Intelligence and Neuroscience
author_facet Huu Hiep Nguyen
author_sort Huu Hiep Nguyen
title Clustering Categorical Data Using Community Detection Techniques
title_short Clustering Categorical Data Using Community Detection Techniques
title_full Clustering Categorical Data Using Community Detection Techniques
title_fullStr Clustering Categorical Data Using Community Detection Techniques
title_full_unstemmed Clustering Categorical Data Using Community Detection Techniques
title_sort clustering categorical data using community detection techniques
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5265
1687-5273
publishDate 2017-01-01
description With the advent of the k-modes algorithm, the toolbox for clustering categorical data has an efficient tool that scales linearly in the number of data items. However, random initialization of cluster centers in k-modes makes it hard to reach a good clustering without resorting to many trials. Recently proposed methods for better initialization are deterministic and reduce the clustering cost considerably. A variety of initialization methods differ in how the heuristics chooses the set of initial centers. In this paper, we address the clustering problem for categorical data from the perspective of community detection. Instead of initializing k modes and running several iterations, our scheme, CD-Clustering, builds an unweighted graph and detects highly cohesive groups of nodes using a fast community detection technique. The top-k detected communities by size will define the k modes. Evaluation on ten real categorical datasets shows that our method outperforms the existing initialization methods for k-modes in terms of accuracy, precision, and recall in most of the cases.
url http://dx.doi.org/10.1155/2017/8986360
work_keys_str_mv AT huuhiepnguyen clusteringcategoricaldatausingcommunitydetectiontechniques
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