基于社交媒体挖掘的精神障碍检测研究

I. Syarif, Nadia Ningtias, T. Badriyah
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引用次数: 15

摘要

传统的心理健康研究依赖于通过与专业医疗保健专家的个人接触收集的信息。最近的研究显示了社交媒体数据在研究精神障碍方面的效用。社交媒体的大量使用以及社交媒体是一个情感池的披露支持了这一观点。对社交媒体数据的研究可能会补充传统技术提供自然测量的能力。我们在Twitter上建立了一个自我宣称的精神疾病诊断语料库,使用了一个公开可用的数据来源。本研究采用基于语言和情感特征的计算语言过程对社交媒体数据中的抑郁率进行建模。我们提出了SenticNet的四个维度的特征:情绪状态、自我指涉和精神障碍字数。结果显示使用基于规则的系统来确定基于语言的抑郁程度。我们从抑郁症诊断组中发现了1733个典型词汇。这一发现是基于Wordnet, SenticNet, Vader, TextBlob的匹配,并通过同义词检查进行评估。我们提出的方法已经成功地识别了8105条推文,然后将其分为3个抑郁级别,1028条推文被分类为高抑郁,1073条推文被分类为中度抑郁,1605条推文被分类为低抑郁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on Mental Disorder Detection via Social Media Mining
Traditional mental health studies rely on information collected through personal contact with professional healthcare specialists. Recent work shows the utility of social media data for studying mental disorder. It is supported by the massive usage of social media and the disclosure that social media is a pool of emotion. Study on social media data could potentially complement the traditional technique in its ability to provide natural measurements.We build a corpus of self-declared mental illness diagnosis on Twitter using a source of publicly-available data. This study implements computational linguistic process with linguistic and emotion feature to model the rate of depression in social media data. We propose the features of SenticNet’s four dimensions emotional state of the mind, self-reference, and mental disorder wordcount. The results are shown using a rule-based system to determine the level of depression based on language. We found 1,733 typical words from the depression diagnosed group. This finding is based on the match of Wordnet, SenticNet, Vader, TextBlob, and has been evaluated by synonyms checking. Our proposed method has been successfully identified and then categorized 8105 tweets into 3 levels of depression, 1028 tweets are categorized as high, 1073 moderate, and 1605 low.
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