Analysis of Gravitation-Based Optimization Algorithms for Clustering and Classification

Sajad Ahmad Rather, P. Bala
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引用次数: 17

Abstract

In recent years, various heuristic algorithms based on natural phenomena and swarm behaviors were introduced to solve innumerable optimization problems. These optimization algorithms show better performance than conventional algorithms. Recently, the gravitational search algorithm (GSA) is proposed for optimization which is based on Newton's law of universal gravitation and laws of motion. Within a few years, GSA became popular among the research community and has been applied to various fields such as electrical science, power systems, computer science, civil and mechanical engineering, etc. This chapter shows the importance of GSA, its hybridization, and applications in solving clustering and classification problems. In clustering, GSA is hybridized with other optimization algorithms to overcome the drawbacks such as curse of dimensionality, trapping in local optima, and limited search space of conventional data clustering algorithms. GSA is also applied to classification problems for pattern recognition, feature extraction, and increasing classification accuracy.
基于重力的聚类与分类优化算法分析
近年来,各种基于自然现象和群体行为的启发式算法被引入来解决无数的优化问题。这些优化算法的性能优于传统算法。最近,提出了基于牛顿万有引力定律和运动定律的引力搜索算法(GSA)进行优化。几年内,GSA在研究界受到欢迎,并已应用于电气科学,电力系统,计算机科学,土木和机械工程等各个领域。本章展示了GSA的重要性,它的杂交,以及在解决聚类和分类问题中的应用。在聚类中,GSA与其他优化算法相结合,克服了传统数据聚类算法存在的维数缺陷、陷入局部最优、搜索空间有限等缺点。GSA还应用于模式识别、特征提取和提高分类精度的分类问题。
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