Clustering Using Cyclic Spaces of Reversible Cellular Automata

Author:

Mukherjee Sukanya, ,Bhattacharjee Kamalika,Das Sukanta, ,

Abstract

This paper introduces a cycle-based clustering technique using the cyclic spaces of reversible cellular automata (CAs). Traditionally, a cluster consists of close objects, which in the case of CAs necessarily means that the objects belong to the same cycle; that is, they are reachable from each other. Each of the cyclic spaces of a cellular automaton (CA) forms a unique cluster. This paper identifies CA properties based on “reachability” that make the clustering effective. To do that, we first figure out which CA rules contribute to maintaining the minimum intracluster distance. Our CA is then designed with such rules to ensure that a limited number of cycles exist in the configuration space. An iterative strategy is also introduced that can generate a desired number of clusters by merging objects of closely reachable clusters from a previous level in the present level using a unique auxiliary CA. Finally, the performance of our algorithm is measured using some standard benchmark validation indices and compared with existing well-known clustering techniques. It is found that our algorithm is at least on a par with the best algorithms existing today on the metric of these standard validation indices.

Publisher

Wolfram Research, Inc.

Subject

General Computer Science,Control and Systems Engineering

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. A Cellular Automata-Based Clustering Technique for High-Dimensional Data;Advances in Intelligent Systems and Computing;2023

2. Optimized Reversible Cellular Automata Based Clustering;Cellular Automata and Discrete Complex Systems;2023

3. Cellular Automata based Adaptive Clustering Approach;2021 2nd International Conference on Electronics, Communications and Information Technology (CECIT);2021-12

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