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A Matlab Toolbox for Feature Importance Ranking

机译:一个Matlab Toolbox,功能重要性排名

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摘要

More attention is paid for the feature importance ranking (FIR), in particular when high-throughput features can be extracted for intelligent diagnosis and personalized medicine. A large number of FIR methods have been proposed, while few are integrated for comparison and real-life applications. In this study, a matlab toolbox is presented and a total of 30 algorithms are collected. Moreover, the toolbox is evaluated on a database of 163 ultrasound images. To each breast lesion, 15 features are handcrafted. And to Figure out an optimal subset of features for classification, all combinations of features are tested and linear support vector machine is used for the malignancy prediction of lesions annotated in ultrasound images. At last, the effectiveness of FIR is analyzed according to performance comparison. The toolbox is available (https://github.com/NicoYuCN/matFIR). In the future work, more FIR methods, feature selection methods and machine learning classifiers will be integrated.
机译:为特征重要性排名(FIR)支付更多关注,特别是当可以提取高吞吐量特性以进行智能诊断和个性化医学时。 已经提出了大量的FIR方法,而很少有用于比较和现实生活应用。 在本研究中,提出了一个MATLAB工具箱,并收集了总共30个算法。 此外,工具箱在163个超声图像的数据库上进行评估。 对每个乳房病变,手工制作了15个功能。 为了弄清楚分类的最佳特征子集,所有特征组合都是测试的,并且线性支持向量机用于超声图像中注释的病变的恶性肿瘤预测。 最后,根据性能比较分析了FIR的有效性。 工具箱可用(https://github.com/nicoyucn/matfir)。 在未来的工作中,将集成更多FIR方法,功能选择方法和机器学习分类器。

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