Active Learning-Based Optimization of Scientific Experimental Design

Ruoyu Wang
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引用次数: 1

Abstract

Active learning (AL) is a machine learning algorithm that can achieve greater accuracy with fewer labeled training instances, for having the ability to ask oracles to label the most valuable unlabeled data chosen iteratively and heuristically by query strategies. Scientific experiments nowadays, though becoming increasingly automated, are still suffering from human involvement in the designing process and the exhaustive search in the experimental space. This article performs a retrospective study on a drug response dataset using the proposed AL scheme comprised of the matrix factorization method of alternating least square (ALS) and deep neural networks (DNN). This article also proposes an AL query strategy based on expected loss minimization. As a result, the retrospective study demonstrates that scientific experimental design, instead of being manually set, can be optimized by AL, and the proposed query strategy ELM sampling shows better experimental performance than other ones such as random sampling and uncertainty sampling.
基于主动学习的科学实验设计优化
主动学习(AL)是一种机器学习算法,它可以用更少的标记训练实例实现更高的准确性,因为它能够要求oracle标记最有价值的未标记数据,这些数据是通过查询策略迭代和启发式选择的。如今的科学实验,虽然越来越自动化,但仍然存在着人为参与设计过程和在实验空间中穷尽搜索的问题。本文使用由交替最小二乘(ALS)和深度神经网络(DNN)的矩阵分解方法组成的ai方案对药物反应数据集进行了回顾性研究。本文还提出了一种基于期望损失最小化的人工智能查询策略。因此,回顾性研究表明,人工智能可以优化科学的实验设计,而不是手动设置,并且所提出的查询策略ELM抽样比随机抽样和不确定抽样等其他查询策略具有更好的实验性能。
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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