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Binary Whale Optimization Algorithm and Binary Moth Flame Optimization with Clustering Algorithms for Clinical Breast Cancer Diagnoses

机译:临床乳腺癌诊断群体算法二进制鲸类优化算法与二元蛾火焰算法

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摘要

Models based on machine learning algorithms have been developed to detect the breast cancer disease early. Feature selection is commonly applied to improve the performance of these models through selecting only relevant features. However, selecting relevant features in unsupervised learning is much difficult. This is due to the absence of class labels that guide the search for relevant information. This kind of the problem has rarely been studied in the literature. This paper presents a hybrid intelligence model that uses the cluster analysis algorithms with bio-inspired algorithms as feature selection for analyzing clinical breast cancer data. A binary version of both moth flame optimization and whale optimization algorithm is proposed. Two evaluation criteria are adopted to evaluate the proposed algorithms: clustering-based measurements and statistics-based measurements. The experimental results positively demonstrate that the capability of the proposed bio-inspired feature selection algorithms to produce both meaningful data partitions and significant feature subsets.
机译:已经开发了基于机器学习算法的模型,以早期检测乳腺癌病。特征选择通常应用于通过仅选择相关功能来提高这些模型的性能。然而,在无监督学习中选择相关的功能是很困难的。这是由于缺乏指导搜索相关信息的类标签。这种问题很少在文献中研究过。本文介绍了一种混合智能模型,它使用与生物启发算法的聚类分析算法作为分析临床乳腺癌数据的特征选择。提出了两种方法的蛾火焰优化和鲸尾优化算法。采用两个评估标准来评估所提出的算法:基于聚类的测量和基于统计的测量。实验结果积极表明,所提出的生物启发特征选择算法的能力产生有意义的数据分区和重要的特征子集。

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