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Detecting Suicidal Ideation with Data Protection in Online Communities

机译:通过在线社区中的数据保护检测自杀念头

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摘要

Recent advances in Artificial Intelligence empower proactive social services that use virtual intelligent agents to automatically detect people's suicidal ideation. Conventional machine learning methods require a large amount of individual data to be collected from users' Internet activities, smart phones and wearable healthcare devices, to amass them in a central location. The centralized setting arises significant privacy and data misuse concerns, especially where vulnerable people are concerned. To address this problem, we propose a novel data-protecting solution to learn a model. Instead of asking users to share all their personal data, our solution is to train a local data-preserving model for each user which only shares their own model's parameters with the server rather than their personal information. To optimize the model's learning capability, we have developed a novel updating algorithm, called average difference descent, to aggregate parameters from different client models. An experimental study using real-world online social community datasets has been included to mimic the scenario of private communities for suicide discussion. The results of experiments demonstrate the effectiveness of our technology solution and paves the way for mental health service providers to apply this technology to real applications.
机译:人工智能的最新进展使前瞻性社会服务能够使用虚拟智能代理自动检测人们的自杀意念。传统的机器学习方法需要从用户的互联网活动,智能电话和可穿戴式医疗设备中收集大量的个人数据,以将它们聚集在中心位置。集中式设置会引起严重的隐私和数据滥用问题,尤其是在涉及弱势人群的地方。为了解决这个问题,我们提出了一种新颖的数据保护解决方案来学习模型。我们的解决方案不是要求用户共享其所有个人数据,而是为每个用户训练一个本地数据保存模型,该模型仅与服务器共享其自身模型的参数,而不是其个人信息。为了优化模型的学习能力,我们开发了一种新颖的更新算法,称为平均差下降,以汇总来自不同客户端模型的参数。使用真实世界的在线社交社区数据集进行的一项实验研究已被模仿出来,以模仿私人社区进行自杀讨论的情况。实验结果证明了我们技术解决方案的有效性,并为精神健康服务提供商将该技术应用于实际应用铺平了道路。

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