告知用户数据输入:探索处理非响应的设计空间

Ananya Bhattacharjee, Haochen Song, Xuening Wu, Justice Tomlinson, Mohi Reza, Akmar Ehsan Chowdhury, Nina Deliu, Thomas W. Price, Joseph Jay Williams
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引用次数: 0

摘要

机器学习算法通常需要用户的定量评分来有效地预测有用的内容。当这些评级不可用时,系统做出隐含的假设或估算来填补缺失的信息;然而,用户通常不知道这些过程。在我们的工作中,我们探索了告知用户关于系统imputation的方法,并尝试了imputed评级和用户纠正imputation所需的各种解释。我们通过对26名参与者部署短信探针来研究这些方法,以帮助他们管理心理健康。我们提供定量结果来报告用户对正确和不正确的指责的反应,以及影响他们评级的潜在风险。通过对参与者的半结构化访谈,我们描述了关于用户自主权的潜在权衡,并得出了有关用户参与imputation过程的替代方法的见解。我们的研究结果为未来通信系统imputation和用户非响应解释的研究提供了有益的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Informing Users about Data Imputation: Exploring the Design Space for Dealing With Non-Responses
Machine learning algorithms often require quantitative ratings from users to effectively predict helpful content. When these ratings are unavailable, systems make implicit assumptions or imputations to fill in the missing information; however, users are generally kept unaware of these processes. In our work, we explore ways of informing the users about system imputations, and experiment with imputed ratings and various explanations required by users to correct imputations. We investigate these approaches through the deployment of a text messaging probe to 26 participants to help them manage psychological wellbeing. We provide quantitative results to report users' reactions to correct vs incorrect imputations and potential risks of biasing their ratings. Using semi-structured interviews with participants, we characterize the potential trade-offs regarding user autonomy, and draw insights about alternative ways of involving users in the imputation process. Our findings provide useful directions for future research on communicating system imputation and interpreting user non-responses.
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