Hybrid Feature Selection based on BTLBO and RNCA to Diagnose the Breast Cancer

Mohan Allam, Nandhini Malaiyappan
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Abstract

Feature selection is a feasible solution to improve the speed and performance of machine learning models. Optimization algorithms are doing a significant job in searching for optimal variables from feature space. Recent feature selection methods are purely depending on various meta heuristic algorithms for searching a good combination of features without considering the importance of individual features, which makes classification models to suffer from local optima or overfitting problems. In this paper, a novel hybrid feature subset selection technique is introduced based on Regularized Neighborhood Component Analysis (RNCA) and Binary Teaching Learning Based Optimization (BTLBO) algorithms to overcome the above problems. RNCA algorithm assigns weights to the attributes based on their contribution in building the learning models for classification. BTLBO algorithm computes the fitness of individuals with respect to the weights of features and selects the best ones. The results of similar feature selection methods are matched with the proposed hybrid model and proved better performance in terms of classification accuracy, recall and AUC measures over breast cancer datasets.
基于BTLBO和RNCA的混合特征选择诊断乳腺癌
特征选择是提高机器学习模型速度和性能的可行方案。优化算法在从特征空间中寻找最优变量方面做着重要的工作。目前的特征选择方法纯粹依靠各种元启发式算法来搜索良好的特征组合,而不考虑单个特征的重要性,这使得分类模型容易出现局部最优或过拟合问题。本文提出了一种基于正则化邻域成分分析(RNCA)和二元教学优化(BTLBO)算法的混合特征子集选择技术,以克服上述问题。RNCA算法根据属性在构建分类学习模型中的贡献为属性分配权重。BTLBO算法根据特征的权重计算个体的适应度,并选择最优的个体。相似特征选择方法的结果与所提出的混合模型相匹配,并在乳腺癌数据集的分类精度、召回率和AUC度量方面证明了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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