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Automating Dynamic Consent Decisions for the Processing of Social Media Data in Health Research

机译:自动化健康研究中社交媒体数据处理的动态同意决策

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摘要

Social media have become a rich source of data, particularly in health research. Yet, the use of such data raises significant ethical questions about the need for the informed consent of those being studied. Consent mechanisms, if even obtained, are typically broad and inflexible, or place a significant burden on the participant. Machine learning algorithms show much promise for facilitating a "middle-ground" approach: using trained models to predict and automate granular consent decisions. Such techniques, however, raise a myriad of follow-on ethical and technical considerations. In this article, we present an exploratory user study (n = 67) in which we find that we can predict the appropriate flow of health-related social media data with reasonable accuracy, while minimizing undesired data leaks. We then attempt to deconstruct the findings of this study, identifying and discussing a number of real-world implications if such a technique were put into practice.
机译:社交媒体已成为丰富的数据来源,特别是在健康研究中。 然而,这些数据的使用提出了关于需要所讨论的知情同意的重要道德问题。 如果甚至获得,如果甚至获得的同意机制通常是广泛的和不灵活的,或者对参与者的重大负担。 机器学习算法显示出促进“中间地面”方法的许多承诺:使用训练有素的模型来预测和自动化颗粒同意决策。 然而,这种技术促进了无数的跟进道德和技术考虑因素。 在本文中,我们介绍了一个探索性用户学习(n = 67),我们发现我们可以通过合理的准确度预测健康相关的社交媒体数据的适当流程,同时最大限度地减少不期望的数据泄漏。 然后,我们试图解构本研究的结果,如果这样的技术付诸实践,则识别和讨论许多真实含义。

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