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A New Method for Discovering Daily Depression from Tweets to Monitor Peoples Depression Status

机译:从推文中发现每日抑郁症以监测人们抑郁状态的新方法

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Many countries are actively involved in Mental Health Illness prevention programs as at present, this affects more than 300 million (>4%) people across the world, and this number is increasing every day. Predictions assume that Mental Health Illness will become the second leading cause for disease burden to stakeholders and rulers in the coming years. Identification of a mental health illness patient is complicated, as many do not agree that they have this stigma. Social Networks is one media that is involved in every ones' life to share/exhibit his emotions and feelings. More people share emotion-related tweets indicate that a predominant feature occurred on that day or in that location. We attempted to study the tweets related to depression and anti-depression and computed a new parameter, which indicates the depressive level of that day. While comparing with past data, this parameter will help the social scientists in the study of psychotherapy (afterburn) and ‘agitated depression’ levels to promote mental health and psychosocial interventions and sustainable development goals.
机译:截至目前,许多国家都积极参与预防心理健康疾病的计划,这影响了全世界3亿多(> 4%)的人,而且这一数字每天都在增加。预测认为,在未来几年中,心理健康疾病将成为造成利益相关者和统治者疾病负担的第二大原因。精神疾病患者的鉴定很复杂,因为许多人不同意他们的这种污名。社交网络是参与每个人生活的一种媒体,可以分享/展示他的情感和感受。越来越多的人分享与情感相关的推文,表明这一天或该地点发生了主要事件。我们尝试研究与抑郁症和抗抑郁症有关的推文,并计算出一个新参数,该参数指示当天的抑郁水平。与过去的数据进行比较时,该参数将帮助社会科学家进行心理治疗(余热)和“焦虑抑郁”水平的研究,以促进心理健康和心理社会干预以及可持续发展目标。

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