Predicting Customer Satisfaction in Customer Support Conversations in Social Media Using Affective Features

Jonathan Herzig, Guy Feigenblat, Michal Shmueli-Scheuer, D. Konopnicki, A. Rafaeli
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引用次数: 26

Abstract

Providing customer support through social media channels is gaining popularity. In such a context, predicting customer satisfaction in an early stage of a service conversation is important. Such an analysis can help personalize agent assignment to maximize customer satisfaction, and prioritize conversations. In this paper, we show that affective features such as customer's and agent's personality traits and emotion expression improve prediction of customer satisfaction when added to more typical text based features. We only utilize information extracted from the first customer conversation turn and previous customer and agent social network activity. Thus, our customer satisfaction classifier outputs its prediction in an early stage of the conversation, before any interaction has taken place between the customer and an agent. Our model was trained and tested on a Twitter conversations dataset of two customer support services, and shows an improvement of 30% in F1-score for predicting dissatisfaction.
利用情感特征预测社交媒体客户支持对话中的客户满意度
通过社交媒体渠道提供客户支持越来越受欢迎。在这种情况下,在服务对话的早期阶段预测客户满意度是很重要的。这样的分析可以帮助个性化座席分配,以最大限度地提高客户满意度,并优先考虑对话。在本文中,我们展示了情感特征,如客户和代理的人格特征和情感表达,当添加到更典型的基于文本的特征中时,可以提高客户满意度的预测。我们只利用从第一次客户会话转向和以前的客户和代理社交网络活动中提取的信息。因此,我们的客户满意度分类器在对话的早期阶段输出其预测,在客户和代理之间发生任何交互之前。我们的模型在两个客户支持服务的Twitter对话数据集上进行了训练和测试,并显示预测不满意的f1分数提高了30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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