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Does encoding matter? A novel view on the quantitative genetic trait prediction problem

机译:编码重要吗?定量遗传性状预测问题的新观点

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Given a set of biallelic molecular markers, such as SNPs, with genotype values encoded numerically on a collection of plant, animal or human samples, the goal of genetic trait prediction is to predict the quantitative trait values by simultaneously modeling all marker effects. Genetic trait prediction is usually represented as linear regression models which require quantitative encodings for the genotypes. There are lots of work on the prediction algorithms, but none of the existing work investigated the effects of the encodings on the genetic trait prediction problem. In this work, we view the genetic trait prediction problem from a novel angle: a multiple regression on categorical data problem, which requires encoding the categorical data into numerical data. We evaluate various encoding mechanisms and investigate by theory how different encodings affect the performance of the genetic trait prediction algorithms. To our knowledge, this is the first analysis on different encoding mechanisms for genetic trait prediction problem. We further proposed two novel encoding methods and we show that they are able to generate numerical features with higher predictive power. Our experiments show that our methods are superior to the other encoding methods for both single marker model and epistasis model.
机译:给定一组双等位分子标记(例如SNP),其基因型值在植物,动物或人类样品的集合上进行数字编码,遗传特征预测的目标是通过同时建模所有标记效应来预测定量特征值。遗传特征预测通常表示为线性回归模型,该模型需要对基因型进行定量编码。关于预测算法的工作很多,但是现有的研究都没有研究编码对遗传特征预测问题的影响。在这项工作中,我们从一个新的角度看待遗传特征预测问题:分类数据问题的多元回归,这需要将分类数据编码为数值数据。我们评估各种编码机制,并通过理论研究不同的编码如何影响遗传特征预测算法的性能。就我们所知,这是对遗传特征预测问题的不同编码机制的首次分析。我们进一步提出了两种新颖的编码方法,并且表明它们能够生成具有更高预测能力的数值特征。我们的实验表明,对于单标记模型和上位性模型,我们的方法均优于其他编码方法。

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