Multi-party dialogues are common in enterprise social media on technical as well as non-technical topics. The outcome of a conversation may be positive or negative. It is important to analyze why a dialogue ends with a particular sentiment from the point of view of conflict analysis as well as future collaboration design. We propose an explainable time series mining algorithm for such analysis. A dialogue is represented as an attributed time series of occurrences of keywords, EMPATH categories, and inferred sentiments at various points in its progress. A special decision tree, with decision metrics that take into account temporal relationships between dialogue events, is used for predicting the cause of the outcome sentiment. Interpretable rules mined from the classifier are used to explain the prediction. Experimental results are presented for the enterprise social media posts in a large company.
翻译:多党对话在企业社交媒体关于技术和非技术议题的媒体中很常见。对话的结果可能是正面的或负面的。必须分析为什么对话从冲突分析以及未来合作设计的角度以某种特殊情绪结束。我们为这种分析提出了一个可解释的时间序列采矿算法。对话被作为关键词、EMPATH类别和各个进展点的推论情绪的推论时间序列。特别决策树,其中考虑到对话事件之间的时间关系,用来预测结果情绪的原因。使用分类器所收集的可解释的规则来解释这种预测。实验结果为大型公司的企业社交媒体职位提供。