Artificial intelligence and natural language processing (NLP) are increasingly being used in customer service to interact with users and answer their questions. The goal of this systematic review is to examine existing research on the use of NLP technology in customer service, including the research domain, applications, datasets used, and evaluation methods. The review also looks at the future direction of the field and any significant limitations. The review covers the time period from 2015 to 2022 and includes papers from five major scientific databases. Chatbots and question-answering systems were found to be used in 10 main fields, with the most common use in general, social networking, and e-commerce areas. Twitter was the second most commonly used dataset, with most research also using their own original datasets. Accuracy, precision, recall, and F1 were the most common evaluation methods. Future work aims to improve the performance and understanding of user behavior and emotions, and address limitations such as the volume, diversity, and quality of datasets. This review includes research on different spoken languages and models and techniques.
翻译:客户服务越来越多地利用人工智能和自然语言处理(NLP)与用户互动并回答他们的问题。系统审查的目的是审查客户服务中使用NLP技术的现有研究,包括研究领域、应用、使用的数据集和评价方法。审查还考察了外地的未来方向和任何重大限制。审查涵盖2015年至2022年这段时期,并包括五个主要科学数据库的文件。查波特和问答系统被发现在10个主要领域使用,在社会网络和电子商务领域使用最为普遍。Twitter是第二常用数据集,大多数研究也使用自己的原始数据集。准确性、准确性、回顾和F1是最常用的评价方法。未来工作的目的是改进对用户行为和情绪的性能和理解,并解决数据集的数量、多样性和质量等限制。这一审查包括对不同口语和模式和技术的研究。