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Can We Assess Mental Health Through Social Media and Smart Devices? Addressing Bias in Methodology and Evaluation

机译:我们可以通过社交媒体和智能设备评估心理健康吗?解决方法和评估中的偏见

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Predicting mental health from smartphone and social media data on a longitudinal basis has recently attracted great interest, with very promising results being reported across many studies [3,9,13,26]. Such approaches have the potential to revolutionise mental health assessment, if their development and evaluation follows a real world deployment setting. In this work we take a closer look at state-of-the-art approaches, using different mental health datasets and indicators, different feature sources and multiple simulations, in order to assess their ability to generalise. We demonstrate that under a pragmatic evaluation framework, none of the approaches deliver or even approach the reported performances. In fact, we show that current state-of-the-art approaches can barely outperform the most naive baselines in the real-world setting, posing serious questions not only about their deployment ability, but also about the contribution of the derived features for the mental health assessment task and how to make better use of such data in the future.
机译:在纵向基础上预测从智能手机和社交媒体数据的心理健康最近吸引了极大的兴趣,并且在许多研究中报道了非常有前途的结果[3,9,13,26]。如果他们的开发和评估遵循真实的世界部署设置,这些方法有可能彻底改变心理健康评估。在这项工作中,我们仔细研究了最先进的方法,使用不同的心理健康数据集和指示器,不同的特征来源和多种模拟,以评估它们的概括能力。我们证明,在务实的评估框架下,任何方法都没有提供甚至接近报告的表现。事实上,我们表明目前的最先进的方法几乎无法满足最真实的基础,不仅会对他们的部署能力构成严肃的问题,而且对派生功能的贡献构成了心理健康评估任务以及如何更好地利用未来这些数据。

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