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A Classification Framework for Online Social Support Using Deep Learning

机译:使用深度学习的在线社会支持分类框架

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摘要

Health consumers engage in social interactions in online health communities (OHCs) to seek or provide social support. Automatic classification of social support exchanged online is important for both researchers and practitioners of online health communities, especially when a large number of messages are posted on regular basis. Classification of social support in OHCs provides an efficient way to assess the effectiveness of social interactions in the virtual environment. Most previous studies of online social support classification are based on "bag-of-words" assumption and have not considered the semantic meaning of words/terms embedded in the online messages. This research proposes a classification framework for online social support using the recent development of word space models and deep learning methods. Specifically, doc2vec models, bag-of-words representations, and linguistic analysis methods are used to extract features from the text messages that are posted in OHC for online social interaction or social support exchange. Then a deep learning model is applied to classify two major types of social support (i.e., informational and emotional support) expressed in OHC reply messages.
机译:保健消费者在在线保健社区(OHC)中进行社交互动,以寻求或提供社交支持。在线交流的社会支持的自动分类对于在线健康社区的研究人员和从业人员都非常重要,尤其是在定期发布大量消息时。 OHC中的社会支持分类为评估虚拟环境中社会互动的有效性提供了一种有效的方法。先前对在线社会支持分类的大多数研究都是基于“词袋”假设,并且没有考虑嵌入在线消息中的词/术语的语义含义。这项研究使用词空间模型和深度学习方法的最新发展提出了在线社交支持的分类框架。具体来说,doc2vec模型,词袋表示法和语言分析方法用于从张贴在OHC中的文本消息中提取功能,以进行在线社会互动或社会支持交换。然后应用深度学习模型对OHC回复消息中表达的两种主要类型的社会支持(即信息和情感支持)进行分类。

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