Developing Confidence in Machine Learning Results

Jessica Baweja, Brett A. Jefferson, C. Fallon
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Abstract

As the field of deep learning has emerged in recent years, the amount of knowledge and expertise that data scientists are expected to absorb and maintain has correspondingly increased. One of the challenges experienced by data scientists working with deep learning models is developing confidence in the accuracy of their approach and the resulting findings. In this study, we conducted semi-structured interviews with data scientists at a national laboratory to understand the processes that data scientists use when attempting to develop their models and the ways that they gain confidence that the results they obtained were accurate. These interviews were analysed to provide an overview of the techniques currently used when working with machine learning (ML) models. Opportunities for collaboration with human factors researchers to develop new tools are identified.
培养对机器学习结果的信心
随着近年来深度学习领域的兴起,数据科学家需要吸收和维护的知识和专业知识也相应增加。使用深度学习模型的数据科学家面临的挑战之一是对他们的方法和结果的准确性建立信心。在这项研究中,我们对一家国家实验室的数据科学家进行了半结构化访谈,以了解数据科学家在试图开发模型时使用的过程,以及他们对所获得的结果的准确性获得信心的方式。对这些访谈进行了分析,以概述当前使用机器学习(ML)模型时使用的技术。确定了与人为因素研究人员合作开发新工具的机会。
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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