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The Informative Extremes: Using Both Nearest and Farthest Individuals Can Improve Relief Algorithms in the Domain of Human Genetics

机译:信息量极致:使用最近和最远的个体可以改善人类遗传学领域的救济算法

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A primary goal of human genetics is the discovery of genetic factors that influence individual susceptibility to common human diseases. This problem is difficult because common diseases are likely the result of joint failure of two or more interacting components instead of single component failures. Efficient algorithms that can detect interacting attributes are needed. The Relief family of machine learning algorithms, which use nearest neighbors to weight attributes, are a promising approach. Recently an improved Relief algorithm called Spatially Uniform ReliefF (SURF) has been developed that significantly increases the ability of these algorithms to detect interacting attributes. Here we introduce an algorithm called SURF* which uses distant instances along with the usual nearby ones to weight attributes. The weighting depends on whether the instances are are nearby or distant. We show this new algorithm significantly outperforms both ReliefF and SURF for genetic analysis in the presence of attribute interactions. We make SURF* freely available in the open source MDR software package. MDR is a cross-platform Java application which features a user friendly graphical interface.
机译:人类遗传学的主要目标是发现影响个人对常见人类疾病易感性的遗传因素。这个问题很难解决,因为常见疾病很可能是两个或多个相互作用的组件联合失效而不是单个组件失效的结果。需要一种可以检测交互属性的高效算法。 Relief系列机器学习算法使用最接近的邻居来加权属性,是一种很有前途的方法。最近,开发了一种改进的救济算法,称为空间均匀救济(SURF),该算法显着提高了这些算法检测交互属性的能力。在这里,我们介绍一种称为SURF *的算法,该算法使用远处的实例以及通常的邻近实例对属性进行加权。权重取决于实例是在附近还是在远处。我们显示,在存在属性交互作用的情况下,这种新算法在遗传分析方面显着优于ReliefF和SURF。我们在开源MDR软件包中免费提供SURF *。 MDR是一个跨平台的Java应用程序,具有用户友好的图形界面。

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