A Customer Service Text Label Recognition Method based on Sentence-Level Pre-Training Technology

Xiaoyu Qi, Bo-Ruei Cheng, Kang Yang, Lili Zhong, Yan Tang
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Abstract

Customer service text data is known as the dialogue text data between users and customer service provider, and it contains a large amount of user information. The effective use of customer service text content can bring great business plan optimization to the service provider. Based on the traditional machine reading comprehension model, this paper builds a customer service text user's attribute label recognition model, and proposes a model pre-training method based on sentence-level pre-training technology: aiming at the background of poor performance of the model in answering comprehensive full-text content analysis questions such as user intent and text sentiment analysis. This paper extracts text summaries based on the T5-pegasus model, constructing a text summaries dataset for model pre-training. Then build a text summarization model including an ERNIE pre-training model, train the model's ability to understand the full text, and improve the model's ability to answer questions that need to be combined with full-text content understanding, such as user intent and sentiment analysis. Use the pre-trained model to solve customer service text label recognition tasks based on machine reading comprehension tasks. The test results based on the data set show that the improved model has an improvement in performance of customer service text label recognition task.
基于句子级预训练技术的客服文本标签识别方法
客服文本数据被称为用户与客服提供商之间的对话文本数据,它包含了大量的用户信息。客户服务文本内容的有效利用可以给服务提供商带来巨大的商业计划优化。本文在传统机器阅读理解模型的基础上,构建了客服文本用户属性标签识别模型,并针对该模型在回答用户意图、文本情感分析等综合性全文内容分析问题时表现不佳的背景,提出了一种基于句子级预训练技术的模型预训练方法。本文基于T5-pegasus模型提取文本摘要,构建用于模型预训练的文本摘要数据集。然后构建包含ERNIE预训练模型的文本摘要模型,训练模型理解全文的能力,提高模型回答用户意图、情感分析等需要与全文内容理解相结合的问题的能力。利用预训练模型解决基于机器阅读理解任务的客服文本标签识别任务。基于数据集的测试结果表明,改进的模型在客户服务文本标签识别任务中的性能有所提高。
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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