一个情境感知,心理治疗的通勤者音乐推荐系统

IF 4.3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Umar Mahmud, Shariq Hussain, Komal Shahzad, Shazia Iffet, Nazir Ahmed Malik, Ibrahima Kalil Toure
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引用次数: 0

摘要

城市通勤的进步为通勤者提供了便利。然而,在欠发达国家,通勤已经成为通勤者心理健康的挑战。乘坐公共交通工具或自己开车的通勤者可能会因交通拥堵和不必要的延误而患上抑郁和焦虑。通过心理治疗音乐可以减轻抑郁和焦虑的症状。然而,这种音乐需要安静的房间,病人可以听。这可以通过通过通勤者的智能设备播放在线流媒体服务上的音乐来克服。从嵌入在通勤者智能设备中的传感器收集的数据被称为当前环境。上下文既包括来自传感器的数据,也包括通过传感器服务获取的推断数据。然后处理当前上下文以确定通勤者的上下文。上下文是一个标签,是机器学习算法作为上下文处理的一部分的结果。作者利用贝叶斯概率对通勤者的当前环境进行了分类。根据分类结果(称为上下文),生成合适的播放列表,并在通勤者的智能设备上播放。反馈循环可以改进分类和播放列表生成。这一提议的机制将改善通勤者的心理健康,包括学生、工人和乘客,他们经常上下班。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Context-Aware, Psychotherapeutic Music Recommender System for Commuters

A Context-Aware, Psychotherapeutic Music Recommender System for Commuters

The advancements in urban commuting have enabled ease of travel for commuters. However, in the underdeveloped world, commuting has become a challenge for the mental health of commuters. A commuter who travels through public transport or their vehicle can develop depression and anxiety due to traffic congestion and unwanted delays. Symptoms of depression and anxiety can be mitigated through psychotherapeutic music. However, this music requires quiet rooms where a patient could listen to them. This can be overcome by playing music available on online streaming services via the commuters’ smart devices. The data from the sensors embedded in a commuter’s smart device is gathered and is termed the current context. The context includes both the data from the sensors and deduced data that is acquired through sensor services. The current context is then processed to determine the context of the commuter. The context is a label that is the outcome of a machine learning algorithm as part of context processing. The authors have utilized Bayesian probability to classify the current context of the commuter. Based on the classification outcome, which is termed context, a suitable playlist is generated and played on the commuters’ smart devices. A feedback loop enables improvement in classification as well as playlist generation. This proposed mechanism would improve the mental health of commuters including students, workers, and passengers, traveling to work and back frequently.

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来源期刊
Human Behavior and Emerging Technologies
Human Behavior and Emerging Technologies Social Sciences-Social Sciences (all)
CiteScore
17.20
自引率
8.70%
发文量
73
期刊介绍: Human Behavior and Emerging Technologies is an interdisciplinary journal dedicated to publishing high-impact research that enhances understanding of the complex interactions between diverse human behavior and emerging digital technologies.
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