Exploring meta-heuristics for partitional clustering: methods, metrics, datasets, and challenges

被引:1
作者
Kaur, Arvinder [1 ]
Kumar, Yugal [2 ]
Sidhu, Jagpreet [2 ]
机构
[1] Chandigarh Engn Coll CGC, Dept Informat Technol, Landran, Punjab, India
[2] NMIMS, Sch Technol Management & Engn, Chandigarh, India
关键词
Automatic clustering; Descriptive analysis; Hybrid approaches; Meta-heuristic algorithms; Partitional clustering; FUZZY C-MEANS; PARTICLE SWARM OPTIMIZATION; LEARNING BASED OPTIMIZATION; HARMONY SEARCH ALGORITHM; ARTIFICIAL BEE COLONY; K-MEANS; CUCKOO OPTIMIZATION; GENETIC ALGORITHM; SYSTEM SEARCH; HYBRIDIZATION;
D O I
10.1007/s10462-024-10920-1
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Partitional clustering is a type of clustering that can organize the data into non-overlapping groups or clusters. This technique has diverse applications across the different various domains like image processing, pattern recognition, data mining, rule-based systems, customer segmentation, image segmentation, and anomaly detection, etc. Hence, this survey aims to identify the key concepts and approaches in partitional clustering. Further, it also highlights its widespread applicability including major advantages and challenges. Partitional clustering faces challenges like selecting the optimal number of clusters, local optima, sensitivity to initial centroids, etc. Therefore, this survey describes the clustering problems as partitional clustering, dynamic clustering, automatic clustering, and fuzzy clustering. The objective of this survey is to identify the meta-heuristic algorithms for the aforementioned clustering. Further, the meta-heuristic algorithms are also categorised into simple meta-heuristic algorithms, improved meta-heuristic algorithms, and hybrid meta-heuristic algorithms. Hence, this work also focuses on the adoption of new meta-heuristic algorithms, improving existing methods and novel techniques that enhance clustering performance and robustness, making partitional clustering a critical tool for data analysis and machine learning. This survey also highlights the different objective functions and benchmark datasets adopted for measuring the effectiveness of clustering algorithms. Before the literature survey, several research questions are formulated to ensure the effectiveness and efficiency of the survey such as what are the various meta-heuristic techniques available for clustering problems? How to handle automatic data clustering? What are the main reasons for hybridizing clustering algorithms? The survey identifies shortcomings associated with existing algorithms and clustering problems and highlights the active area of research in the clustering field to overcome these limitations and improve performance.
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页数:60
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