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Genetic Programming Representations for Multi-dimensional Feature Learning in Biomedical Classification

机译:生物医学分类中多维特征学习的遗传规划表示

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We present a new classification method that uses genetic programming (GP) to evolve feature transformations for a deterministic, distanced-based classifier. This method, called M4GP, differs from common approaches to classifier representation in GP in that it does not enforce arbitrary decision boundaries and it allows individuals to produce multiple outputs via a stack-based GP system. In comparison to typical methods of classification, M4GP can be advantageous in its ability to produce readable models. We conduct a comprehensive study of M4GP, first in comparison to other GP classifiers, and then in comparison to six common machine learning classifiers. We conduct full hyper-parameter optimization for all of the methods on a suite of 16 biomedical data sets, ranging in size and difficulty. The results indicate that M4GP outperforms other GP methods for classification. M4GP performs competitively with other machine learning methods in terms of the accuracy of the produced models for most problems. M4GP also exhibits the ability to detect epistatic interactions better than the other methods.
机译:我们提出了一种新的分类方法,该方法使用遗传规划(GP)来发展基于确定性,基于距离的分类器的特征转换。这种称为M4GP的方法与GP中分类器表示的常规方法不同,它不强制执行任意决策边界,并且允许个人通过基于堆栈的GP系统产生多个输出。与典型的分类方法相比,M4GP在产生可读模型的能力方面可能是有利的。我们首先与其他GP分类器进行比较,然后与六个常见的机器学习分类器进行比较,对M4GP进行全面的研究。我们在一套16种生物医学数据集上对所有方法进行了完整的超参数优化,涉及的规模和难度各不相同。结果表明,M4GP在分类方面优于其他GP方法。就生成的大多数问题模型的准确性而言,M4GP与其他机器学习方法相比具有竞争优势。 M4GP还具有比其他方法更好地检测上位相互作用的能力。

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