TABU-KM: A HYBRID CLUSTERING ALGORITHM BASED ON TABU SEARCH APPROACH

Tabu-KM: A Hybrid Clustering Algorithm Based on Tabu Search Approach

Tabu-KM: A Hybrid Clustering Algorithm Based on Tabu Search Approach

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The clustering problem under the criterion of minimum sum of squares is a non-convex and non-linear program, which possesses many locally optimal values, resulting that its solution often falls into these trap and therefore cannot converge to global optima solution.In this paper, an efficient hybrid optimization algorithm is developed for solving this problem, called Tabu-KM.It gathers the optimization property of tabu search and the local search capability of Antecedent of lack of proficiency and the need for an automated financial plan for the course entrepreneurship creativity and innovation k-means algorithm together.

The contribution of proposed algorithm is to Setup of ASLT Parameters for Evaluation of the Shelf-Life for the New Dry Snack Food Product produce tabu space for escaping from the trap of local optima and finding better solutions effectively.The Tabu-KM algorithm is tested on several simulated and standard datasets and its performance is compared with k-means, simulated annealing, tabu search, genetic algorithm, and ant colony optimization algorithms.The experimental results on simulated and standard test problems denote the robustness and efficiency of the algorithm and confirm that the proposed method is a suitable choice for solving data clustering problems.

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