Research on an Interactive Question Answering System of Artificial Intelligence Customer Service Based on Word2Vec

Jiong Zhang, Chunguang Zheng, Jing Yang, M. Usama
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引用次数: 1

Abstract

In order to reduce the labor cost pressure of telecom operators' customer service and improve the service quality, the natural language analysis technology based on artificial intelligence technology will realize the automatic question and answer customer service.This paper proposes to obtain word vectors based on Word2vec model. By comparing the word vectors under different training model parameters, the results show that the low-frequency word threshold plays a better role in controlling the number of the final trained word vectors. The training results of SKIP-GRAM model are better than that of CBOW and the word list is more regular. Under the condition of making full use of the existing customer service knowledge resources, the new system will realize the goal of innovating service means, expanding customer service channels, diverting customer service pressure and improving service efficiency.
基于Word2Vec的人工智能客服交互式问答系统研究
为了减轻电信运营商客服的人工成本压力,提高服务质量,基于人工智能技术的自然语言分析技术将实现自动问答客服。本文提出了基于Word2vec模型的词向量获取方法。通过比较不同训练模型参数下的词向量,结果表明低频词阈值在控制最终训练词向量的数量方面起到了更好的作用。SKIP-GRAM模型的训练效果优于CBOW模型,并且单词表更有规则性。在充分利用现有客服知识资源的情况下,实现创新服务手段、拓展客服渠道、分流客服压力、提高服务效率的目标。
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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