Improved water cycle algorithm with probabilistic neural network to solve classification problems

被引:0
|
作者
Mohammed Alweshah
Maria Al-Sendah
Osama M. Dorgham
Ammar Al-Momani
Sara Tedmori
机构
[1] Al-Balqa Applied University,
[2] Princess Sumaya University for Technology,undefined
来源
Cluster Computing | 2020年 / 23卷
关键词
Water cycle algorithm; Probabilistic neural networks; Classification problem; Metaheuristics;
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暂无
中图分类号
学科分类号
摘要
Classification is achieved through the categorisation of objects into predefined categories or classes, where the categories or classes are created based on a similar set of attributes of the object. This is referred to as supervised learning. Numerous methodologies have been formulated by researchers in order to solve classification problems effectively. These methodologies exhibit an uncomplicated structure and fast training, and are based on artificial intelligence, such as the probabilistic neural network (PNN). In this study, techniques to improve the accurateness of the PNN in solving classification problems have been analysed with the help of the water cycle algorithm (WCA), which is a population-based metaheuristic that imitates the water cycle in the real world. In the recommended solution, near-optimal solutions are created in order to regulate the arbitrary parameter selection of the PNN. In this study, it has also been suggested that the enhanced WCA (E-WCA) can be used to attain a balance between exploitation and exploration, so that premature conjunction and immobility of the population can be avoided. With the help of 11 standard benchmark datasets, the recommended solutions were verified. The results of the experiment substantiated that the WCA and E-WCA are capable of improving the weight parameters of the PNN, thereby imparting improved performance with respect to convergence speed and classification accuracy, compared with the initial PNN classifier.
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页码:2703 / 2718
页数:15
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