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Breast cancer detection with logistic regression improved by features constructed by Kaizen programming in a hybrid approach

机译:通过改进的Kaizen程序构建的功能改进了具有逻辑回归的乳腺癌检测

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Breast cancer is known as the second largest cause of cancer deaths among women, but thankfully it can be cured if diagnosed early. There have been many investigations on methods to improve the accuracy of the diagnostic, and Machine Learning (ML) and Evolutionary Computation (EC) tools are among the most successfully employed modern methods. On the other hand, Logistic Regression (LR), a traditional and popular statistical method for classification, is not commonly used by computer scientists as those modern methods usually outperform it. Here we show that LR can achieve results that are similar to those of ML and EC methods and can even outperform them when useful knowledge is discovered in the dataset. In this paper, we employ the recently proposed Kaizen Programming (KP) approach with LR to construct high-quality nonlinear combinations of the original features resulting in new sets of features. Experimental analysis indicates that the new sets provide significantly better predictive accuracy than the original ones. When compared to related work from the literature, it is shown that the proposed approach is competitive and a promising method for automatic feature construction.
机译:乳腺癌是导致女性癌症死亡的第二大原因,但值得庆幸的是,如果及早诊断,它可以治愈。对于提高诊断准确性的方法已经进行了许多研究,并且机器学习(ML)和进化计算(EC)工具是最成功采用的现代方法之一。另一方面,传统的,流行的分类统计方法Logistic回归(LR)在计算机科学家中并不常用,因为那些现代方法通常胜过它。在这里,我们证明了LR可以实现与ML和EC方法相似的结果,并且在数据集中发现有用的知识时甚至可以胜过它们。在本文中,我们采用最近提出的带有LR的Kaizen编程(KP)方法来构造原始特征的高质量非线性组合,从而产生新的特征集。实验分析表明,新的集合比原始集合提供了更好的预测准确性。当与文献中的相关工作进行比较时,表明所提出的方法是有竞争力的,并且是一种用于自动特征构建的有前途的方法。

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