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The promise of automated machine learning for the genetic analysis of complex traits

机译:自动化机器学习在复杂性状遗传分析中的前景

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摘要

The genetic analysis of complex traits has been dominated by parametric statistical methods due to their theoretical properties, ease of use, computational efficiency, and intuitive interpretation. However, there are likely to be patterns arising from complex genetic architectures which are more easily detected and modeled using machine learning methods. Unfortunately, selecting the right machine learning algorithm and tuning its hyperparameters can be daunting for experts and non-experts alike. The goal of automated machine learning (AutoML) is to let a computer algorithm identify the right algorithms and hyperparameters thus taking the guesswork out of the optimization process. We review the promises and challenges of AutoML for the genetic analysis of complex traits and give an overview of several approaches and some example applications to omics data. It is our hope that this review will motivate studies to develop and evaluate novel AutoML methods and software in the genetics and genomics space. The promise of AutoML is to enable anyone, regardless of training or expertise, to apply machine learning as part of their genetic analysis strategy.
机译:复杂性状的遗传分析由于其理论特性、易用性、计算效率和直观解释性而一直以参数统计方法为主。然而,复杂的遗传结构可能会产生一些模式,使用机器学习方法更容易检测和建模。不幸的是,选择正确的机器学习算法并调整其超参数对于专家和非专家来说都是令人生畏的。自动化机器学习 (AutoML) 的目标是让计算机算法识别正确的算法和超参数,从而消除优化过程中的猜测。我们回顾了AutoML在复杂性状遗传分析方面的前景和挑战,并概述了几种方法和一些在组学数据中的应用示例。我们希望这篇综述能够激励研究在遗传学和基因组学领域开发和评估新的AutoML方法和软件。AutoML 的承诺是使任何人,无论培训或专业知识如何,都可以将机器学习作为其遗传分析策略的一部分。

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