A Hybrid Chimp Optimization Algorithm and Generalized Normal Distribution Algorithm with Opposition-Based Learning Strategy for Solving Data Clustering Problems
Sayed Pedram Haeri Boroujeni, Elnaz Pashaei

TL;DR
This paper introduces a novel hybrid optimization algorithm combining Chimp Optimization Algorithm, Generalized Normal Distribution Algorithm, and Opposition-Based Learning to improve data clustering performance, especially in high-dimensional and complex scenarios.
Contribution
It proposes a new hybrid meta-heuristic approach with two variants of ChOA and a selective opposition strategy, enhancing clustering accuracy and convergence speed over existing methods.
Findings
Outperforms seven popular meta-heuristic algorithms in clustering tasks.
Achieves lower intra-cluster distances and error rates.
Speeds up convergence in complex data scenarios.
Abstract
This paper is concerned with data clustering to separate clusters based on the connectivity principle for categorizing similar and dissimilar data into different groups. Although classical clustering algorithms such as K-means are efficient techniques, they often trap in local optima and have a slow convergence rate in solving high-dimensional problems. To address these issues, many successful meta-heuristic optimization algorithms and intelligence-based methods have been introduced to attain the optimal solution in a reasonable time. They are designed to escape from a local optimum problem by allowing flexible movements or random behaviors. In this study, we attempt to conceptualize a powerful approach using the three main components: Chimp Optimization Algorithm (ChOA), Generalized Normal Distribution Algorithm (GNDA), and Opposition-Based Learning (OBL) method. Firstly, two versions…
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