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Cluster-based approach to improve affect recognition from passively sensed data

机译:基于群集的方法来改善从被动感测数据的影响识别

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Negative affect is a proxy for mental health in adults. By being able to predict participants' negative affect states unobtrusively, researchers and clinicians will be better positioned to deliver targeted, just-in-time mental health interventions via mobile applications. This work attempts to personalize the passive recognition of negative affect states via group-based modeling of user behavior patterns captured from mobility, communication, and activity patterns. Results show that group models outperform generalized models in a dataset based on two weeks of users' daily lives.
机译:负面影响是成人心理健康的代理。通过能够预测参与者的负面影响,不引人注目,研究人员和临床医生将更好地定位通过移动应用程序提供有针对性的立即心理健康干预措施。该工作试图通过由移动性,通信和活动模式捕获的基于组的用户行为模式的基于组的建模来个性化负面影响状态的被动识别。结果表明,基于用户日常生活的两周,组模型在数据集中优于广义模型。

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