Mental health conditions remain under-diagnosed even in countries with common access to advanced medical care. The ability to accurately and efficiently predict mood from easily collectible data has several important implications towards the early detection and intervention of mental health disorders. One promising data source to help monitor human behavior is from daily smartphone usage. However, care must be taken to summarize behaviors without identifying the user through personal (e.g., personally identifiable information) or protected attributes (e.g., race, gender). In this paper, we study behavioral markers or daily mood using a recent dataset of mobile behaviors from high-risk adolescent populations. Using computational models, we find that multimodal modeling of both text and app usage features is highly predictive of daily mood over each modality alone. Furthermore, we evaluate approaches that reliably obfuscate user identity while remaining predictive of daily mood. By combining multimodal representations with privacy-preserving learning, we are able to push forward the performance-privacy frontier as compared to unimodal approaches.
翻译:即使在有共同获得先进医疗护理机会的国家,心理健康状况仍然未得到充分诊断; 能够准确和高效地预测容易收集的数据对早期发现和干预心理健康疾病具有若干重要影响; 有助于监测人类行为的有希望的数据来源是日常使用智能手机; 然而,必须注意总结行为,而不通过个人(如个人可识别的信息)或受保护的属性(如种族、性别)来识别使用者; 本文利用高风险青少年移动行为的最新数据集,研究行为标志或日常情绪; 我们使用计算模型发现,文本和应用程序使用功能的多式模型高度预测每种模式的日常情绪; 此外,我们评估如何可靠地模糊用户身份,同时保持对日常情绪的预测; 通过将多式陈述与隐私保护学习相结合,我们能够推进与非单一模式方法相比的绩效-隐私前沿。