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Integrated Algorithm for Unsupervised Data Clustering Problems in Data Mining
Author(s) -
Nibras Othman Abdul Wahid,
Saif Aamer Fadhil,
Noor Abbood Jasim
Publication year - 2019
Publication title -
journal of southwest jiaotong university
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.308
H-Index - 21
ISSN - 0258-2724
DOI - 10.35741/issn.0258-2724.54.5.40
Subject(s) - cluster analysis , crossover , computer science , benchmark (surveying) , data mining , heuristic , cure data clustering algorithm , canopy clustering algorithm , genetic algorithm , clustering high dimensional data , key (lock) , algorithm , machine learning , correlation clustering , artificial intelligence , geography , computer security , geodesy
Unsupervised data clustering investigation is a standout amongst the most valuable apparatuses and an enlightening undertaking in data mining that looks to characterize homogeneous gatherings of articles depending on likeness and is utilized in numerous applications. One of the key issues in data mining is clustering data that have pulled in much consideration. One of the famous clustering algorithms is K-means clustering that has been effectively connected to numerous issues. Scientists recommended enhancing the nature of K-means, optimization algorithms were hybridized. In this paper, a heuristic calculation, Lion Optimization Algorithm (LOA), and Genetic Algorithm (GA) were adjusted for K-Means data clustering by altering the fundamental parameters of LOA calculation, which is propelled from the characteristic enlivened calculations. The uncommon way of life of lions and their participation attributes has been the essential inspiration for the advancement of this improvement calculation. The GA is utilized when it is required to reallocate the clusters using the genetic operators, crossover, and mutation. The outcomes of the examination of this calculation mirror the capacity of this methodology in clustering examination on the number of benchmark datasets from UCI Machine Learning Repository.

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