呼叫中心对话中客户愤怒情绪的预测

J. Mongkolnavin, Widakorn Saewong
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引用次数: 1

摘要

呼叫中心是与音频数据使用最相关的部门。它的主要任务之一是监控客户的痛苦,因为它对组织有负面影响。一项具有挑战性的任务是开发一个模型,可以预测客户是否会在下一轮对话中生气。该模型可协助代理人采取适当的行动,防止事故发生。在本研究中,我们研究了一种从呼叫中心对话中的客户声音建立愤怒预测模型的方法。建立模型需要5个过程:(1)客户回合提取(2)情绪标注(3)语音特征选择(4)长短期记忆网络数据预处理(5)愤怒预测建模。用连续1、2、3、4、5个回合的时间序列数据集构建了5个长短期记忆网络。实验结果表明,用连续3回合数据构建的长短期记忆网络在平均准确率和误报率方面都比随机和良好猜测基准有较好的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Forthcoming Anger of Customer in Call Center Dialogs
Call center is a department that is most relevant to audio data usage. One of its major tasks is to monitor customers’ anguish because it has a negative impact on the organization. One challenging task is to develop a model that can predict whether a customer is getting angry in the next turn of conversation. Such model can assist agents in taking appropriate action(s) to prevent the incidents. In this study, we investigate an approach to build an anger prediction model from customers’ voice in call center dialogs. To create the model requires 5 processes: (1) Customer’s turn extraction (2) Emotion annotation (3) Voice feature selection (4) Data pre-processing for long short-term memory networks, and (5) Anger prediction modeling. Five long short-term memory networks were built with the time series data sets of 1, 2, 3, 4, and 5 consecutive turns. The experimental results showed that the long short-term memory network built with the 3-consecutive turn data has promising performance in aspect of Average Precision and False Negative Rate when compared to the random and good guess benchmarks.
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