Review: Metaheuristic Search-Based Fuzzy Clustering Algorithms
This is an incremental review paper for researchers in unsupervised learning, focusing on improving fuzzy clustering techniques.
The paper reviews metaheuristic search methods to address key challenges in fuzzy clustering, such as selecting initial cluster centers and determining the optimal number of clusters, but does not report specific numerical results.
Fuzzy clustering is a famous unsupervised learning method used to collecting similar data elements within cluster according to some similarity measurement. But, clustering algorithms suffer from some drawbacks. Among the main weakness including, selecting the initial cluster centres and the appropriate clusters number is normally unknown. These weaknesses are considered the most challenging tasks in clustering algorithms. This paper introduces a comprehensive review of metahueristic search to solve fuzzy clustering algorithms problems.