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A Review on Human–AI Interaction in Machine Learning and Insights for Medical Applications

机译:医疗应用机器学习与洞察中的人为AI互动综述

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摘要

Objective: To provide a human–Artificial Intelligence (AI) interaction review for Machine Learning (ML) applications to inform how to best combine both human domain expertise and computational power of ML methods. The review focuses on the medical field, as the medical ML application literature highlights a special necessity of medical experts collaborating with ML approaches. Methods: A scoping literature review is performed on Scopus and Google Scholar using the terms “human in the loop”, “human in the loop machine learning”, and “interactive machine learning”. Peer-reviewed papers published from 2015 to 2020 are included in our review. Results: We design four questions to investigate and describe human–AI interaction in ML applications. These questions are “Why should humans be in the loop?”, “Where does human–AI interaction occur in the ML processes?”, “Who are the humans in the loop?”, and “How do humans interact with ML in Human-In-the-Loop ML (HILML)?”. To answer the first question, we describe three main reasons regarding the importance of human involvement in ML applications. To address the second question, human–AI interaction is investigated in three main algorithmic stages: 1. data producing and pre-processing; 2. ML modelling; and 3. ML evaluation and refinement. The importance of the expertise level of the humans in human–AI interaction is described to answer the third question. The number of human interactions in HILML is grouped into three categories to address the fourth question. We conclude the paper by offering a discussion on open opportunities for future research in HILML.
机译:目的:为机器学习(ML)申请提供人工智能(AI)互动审查,以告知如何最好地将人类领域专业知识和ML方法的计算能力结合在一起。该审查重点介绍了医疗领域,因为医疗ML应用文献突出了与ML方法合作的医学专家的特殊必要性。方法:在Scopus和Google Scholar上使用“循环中的人类”,“循环机器学习”,“交互式机器学习”进行了裁缝和谷歌学者的范围文献综述。 2015年至2020年发布的同行评审论文包括在我们的评论中。结果:我们设计四个问题来调查和描述ML应用中的人为AI互动。这些问题是“为什么人类应该在循环中?”,“人类AI互动在ML过程中发生的地方?”,“循环中的人类是谁?”,和“人类如何与人类互动-in-循环ml(hilml)?“。要回答第一个问题,我们描述了有关人类参与ML应用程序的重要性的三个主要原因。为了解决第二个问题,在三个主要算法阶段调查人AI互动:1。数据产生和预处理; 2. ML型号;和3. ML评估和改进。描述了人类在人类互动中的专业知识水平的重要性,以回答第三个问题。 HILML中的人类交互数量分为三类,以解决第四类问题。我们通过讨论Hilml的未来研究的开放机会讨论,我们得出结论。

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