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Affective, Linguistic and Topic Patterns in Online Autism Communities

机译:在线自闭症社区中的情感,语言和主题模式

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Online communities offer a platform to support and discuss health issues. They provide a more accessible way to bring people of the same concerns or interests. This paper aims to study the characteristics of online autism communities (called Clinical) in comparison with other online communities (called Control) using data from 110 Live Journal weblog communities. Using machine learning techniques, we comprehensively analyze these online autism communities. We study three key aspects expressed in the blog posts made by members of the communities: sentiment, topics and language style. Sentiment analysis shows that the sentiment of the clinical group has lower valence, indicative of poorer moods than people in control. Topics and language styles are shown to be good predictors of autism posts. The result shows the potential of social media in medical studies for a broad range of purposes such as screening, monitoring and subsequently providing supports for online communities of individuals with special needs.
机译:在线社区提供支持和讨论健康问题的平台。它们提供更可达的方式来带来相同问题或兴趣的人。本文旨在研究在线自闭症社区(称为临床)的特征,与其他在线社区(称为控制)使用来自110个直播期刊WebLog社区的数据的比较。采用机器学习技术,我们全面分析了这些在线自闭症社区。我们研究了社区成员制造的博客帖子中表达的三个关键方面:情绪,主题和语言风格。情绪分析表明,临床组的情绪具有较低的价值,表明情绪较差,而不是控制中的人。主题和语言样式被证明是自闭症柱的良好预测因素。结果显示了社交媒体在医学研究中的潜力,以广泛的目的,例如筛选,监测和随后为具有特殊需求的个人的在线社区提供支持。

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