Inference of genetic networks using random forests: performance improvement using a new variable importance measure

IF 0.4 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Shuhei Kimura, Yahiro Takeda, M. Tokuhisa, Mariko Okada
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引用次数: 0

Abstract

Background: Among the various methods so far proposed for genetic network inference, this study focuses on the random-forest-based methods. Confidence values are assigned to all of the candidate regulations when taking the random-forest-based approach. To our knowledge, all of the random-forest-based methods make the assignments using the standard variable importance measure defined in tree-based machine learning techniques. We think however that this measure has drawbacks in the inference of genetic networks. Results: In this study we therefore propose an alternative measure, what we call ``the random-input variable importance measure,'' and design a new inference method that uses the proposed measure in place of the standard measure in the existing random-forest-based inference method. We show, through numerical experiments, that the use of the random-input variable importance measure improves the performance of the existing random-forest-based inference method by as much as 45.5% with respect to the area under the recall-precision curve (AURPC). Conclusion: This study proposed the random-input variable importance measure for the inference of genetic networks. The use of our measure improved the performance of the random-forest-based inference method. In this study, we checked the performance of the proposed measure only on several genetic network inference problems. However, the experimental results suggest that the proposed measure will work well in other applications of random forests.
使用随机森林的遗传网络推理:使用一种新的变量重要性度量来提高性能
背景:在目前提出的各种遗传网络推断方法中,本研究主要关注基于随机森林的方法。当采用基于随机森林的方法时,将置信度值分配给所有候选法规。据我们所知,所有基于随机森林的方法都使用基于树的机器学习技术中定义的标准变量重要性度量来进行分配。然而,我们认为这种方法在遗传网络的推断中存在缺陷。结果:因此,在本研究中,我们提出了一种替代度量,我们称之为“随机输入变量重要性度量”,并设计了一种新的推理方法,使用所提出的度量代替现有基于随机森林的推理方法中的标准度量。我们通过数值实验表明,随机输入变量重要性度量的使用将现有基于随机森林的推理方法的性能提高了45.5%,相对于召回精度曲线(AURPC)下的面积。结论:本研究提出了遗传网络推断的随机输入变量重要性测度。我们的度量的使用提高了基于随机森林的推理方法的性能。在这项研究中,我们只在几个遗传网络推理问题上检查了所提出的度量的性能。然而,实验结果表明,所提出的措施在随机森林的其他应用中也能很好地工作。
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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来源期刊
Chem-Bio Informatics Journal
Chem-Bio Informatics Journal BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
0.60
自引率
0.00%
发文量
8
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