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Understanding Patterns of Anorexia Manifestations in Social Media Data with Deep Learning

机译:通过深度学习了解社交媒体数据中厌食症表现的模式

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Eating disorders are a growing problem especially among young people, yet they have been under-studied in computational research compared to other mental health disorders such as depression. Computational methods have a great potential to aid with the automatic detection of mental health problems, but state-of-the-art machine learning methods based on neural networks are notoriously difficult to interpret, which is a crucial problem for applications in the mental health domain. We propose leveraging the power of deep learning models for automatically detecting signs of anorexia based on social media data, while at the same time focusing on interpreting their behavior. We train a hierarchical attention network to detect people with anorexia, and use its internal encodings to discover different clusters of anorexia symptoms. We interpret the identified patterns from multiple perspectives, including emotion expression, psycho-linguistic features and personality traits, and we offer novel hypotheses to interpret our findings from a psycho-social perspective. Some interesting findings are patterns of word usage in some users with anorexia which show that they feel less as being part of a group compared to control cases, as well as that they have abandoned explanatory activity as a result of a greater feeling of helplessness and fear.
机译:饮食障碍是一个日益严重的问题,尤其是在年轻人中,但与抑郁症等其他心理健康障碍相比,计算机研究对其研究不足。计算方法在帮助自动检测心理健康问题方面有很大的潜力,但基于神经网络的最先进的机器学习方法众所周知难以解释,这是心理健康领域应用的一个关键问题。我们建议利用深度学习模型的力量,根据社交媒体数据自动检测厌食症的迹象,同时专注于解释他们的行为。我们训练一个分级注意网络来检测厌食症患者,并使用其内部编码来发现不同的厌食症症状群。我们从情感表达、心理语言特征和人格特征等多个角度解释了识别出的模式,并从心理社会角度提出了新的假设来解释我们的发现。一些有趣的发现是,一些厌食症患者的词汇使用模式表明,与对照组相比,他们觉得作为一个群体的一部分少了一些,并且由于更大的无助感和恐惧感,他们放弃了解释活动。

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