Early Depression Detection from Social Network Using Deep Learning Techniques

F. Shah, F. Ahmed, Sajib Kumar Saha Joy, Sifat Ahmed, Samir Sadek, Rimon Shil, M. H. Kabir
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引用次数: 31

Abstract

Depression is a psychological disorder that affects over three hundred million humans worldwide. A person who is depressed suffers from anxiety in day-to-day life, which affects that person in the relationship with their family and friends, leading to different diseases and in the worst-case death by suicide. With the growth of the social network, most of the people share their emotion, their feelings, their thoughts in social media. If their depression can be detected early by analyzing their post, then by taking necessary steps, a person can be saved from depression-related diseases or in the best case he can be saved from committing suicide. In this research work, a hybrid model has been proposed that can detect depression by analyzing user's textual posts. Deep learning algorithms were trained using the training data and then performance has been evaluated on the test data of the dataset of reddit which was published for the pilot piece of work, Early Detection of Depression in CLEF eRisk 2017. In particular, Bidirectional Long Short Term Memory (BiLSTM) with different word embedding techniques and metadata features were proposed which gave good results.
使用深度学习技术从社交网络中检测早期抑郁症
抑郁症是一种心理障碍,影响着全世界超过3亿人。一个抑郁的人在日常生活中感到焦虑,这影响到他与家人和朋友的关系,导致不同的疾病,最坏的情况是自杀死亡。随着社交网络的发展,大多数人在社交媒体上分享他们的情感、感受和想法。如果他们的抑郁症可以通过分析他们的帖子及早发现,然后采取必要的措施,一个人可以从抑郁症相关疾病中拯救出来,或者在最好的情况下,他可以避免自杀。在这项研究中,我们提出了一个混合模型,可以通过分析用户的文本帖子来检测抑郁症。深度学习算法使用训练数据进行训练,然后在reddit数据集的测试数据上进行性能评估,该数据集是为试点工作发布的,CLEF eRisk 2017中抑郁症的早期检测。特别提出了采用不同词嵌入技术和元数据特征的双向长短期记忆方法,并取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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