Althoff Tim, Clark Kevin, Leskovec Jure
Stanford University.
Trans Assoc Comput Linguist. 2016;4:463-476.
Mental illness is one of the most pressing public health issues of our time. While counseling and psychotherapy can be effective treatments, our knowledge about how to conduct successful counseling conversations has been limited due to lack of large-scale data with labeled outcomes of the conversations. In this paper, we present a large-scale, quantitative study on the discourse of text-message-based counseling conversations. We develop a set of novel computational discourse analysis methods to measure how various linguistic aspects of conversations are correlated with conversation outcomes. Applying techniques such as sequence-based conversation models, language model comparisons, message clustering, and psycholinguistics-inspired word frequency analyses, we discover actionable conversation strategies that are associated with better conversation outcomes.
精神疾病是我们这个时代最紧迫的公共卫生问题之一。虽然咨询和心理治疗可能是有效的治疗方法,但由于缺乏带有对话标记结果的大规模数据,我们对如何进行成功的咨询对话的了解一直有限。在本文中,我们对基于短信的咨询对话进行了大规模的定量研究。我们开发了一套新颖的计算话语分析方法,以衡量对话的各种语言方面如何与对话结果相关联。通过应用基于序列的对话模型、语言模型比较、消息聚类和受心理语言学启发的词频分析等技术,我们发现了与更好的对话结果相关的可行对话策略。