心理健康无所不在监测:通过复杂事件处理检测情境丰富的社交模式

I. Moura, Francisco Silva, L. Coutinho, A. Teles
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引用次数: 3

摘要

传统上,监测和评估与心理健康有关的社会行为的过程是基于自我报告的信息,这受到反应的主观特征和各种认知偏见的限制。然而,今天,计算方法可以使用无处不在的设备来监测与心理健康相关的社会行为,而不是依赖于自我报告。因此,这些技术可以用来识别日常的社会活动,从而能够识别可能表明精神障碍的异常行为。在本文中,我们提出了一种检测上下文丰富的社交模式的解决方案。具体来说,我们介绍了一种能够识别被监控人员的社交日常的算法。为了实现所提出的算法,该算法使用了一套复杂事件处理(CEP)规则,该规则允许对来自无处不在的设备的社交数据流进行连续处理。实验表明,所提出的解决方案能够检测类似于批处理算法的社交模式,并证明基于上下文的识别能够更好地理解社交常规。
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Mental Health Ubiquitous Monitoring: Detecting Context-Enriched Sociability Patterns Through Complex Event Processing
Traditionally, the process of monitoring and evaluating social behavior related to mental health has based on self-reported information, which is limited by the subjective character of responses and by various cognitive biases. Today, however, computational methods can use ubiquitous devices to monitor social behaviors related to mental health rather than relying on self-reports. Therefore, these technologies can be used to identify the routine of social activities, which enables the recognition of abnormal behaviors that may be indicative of mental disorders. In this paper, we present a solution for detecting context-enriched sociability patterns. Specifically, we introduced an algorithm capable of recognizing the social routine of monitored people. To implement the proposed algorithm, it was used a set of Complex Event Processing (CEP) rules, which allow the continuous processing of the social data stream derived from ubiquitous devices. The experiments performed indicated that the proposed solution is capable of detecting sociability patterns similar to a batch algorithm and demonstrated that context-based recognition provides a better understanding of social routine.
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