Any organization needs to improve their products, services, and processes. In this context, engaging with customers and understanding their journey is essential. Organizations have leveraged various techniques and technologies to support customer engagement, from call centres to chatbots and virtual agents. Recently, these systems have used Machine Learning (ML) and Natural Language Processing (NLP) to analyze large volumes of customer feedback and engagement data. The goal is to understand customers in context and provide meaningful answers across various channels. Despite multiple advances in Conversational Artificial Intelligence (AI) and Recommender Systems (RS), it is still challenging to understand the intent behind customer questions during the customer journey. To address this challenge, in this paper, we study and analyze the recent work in Conversational Recommender Systems (CRS) in general and, more specifically, in chatbot-based CRS. We introduce a pipeline to contextualize the input utterances in conversations. We then take the next step towards leveraging reverse feature engineering to link the contextualized input and learning model to support intent recognition. Since performance evaluation is achieved based on different ML models, we use transformer base models to evaluate the proposed approach using a labelled dialogue dataset (MSDialogue) of question-answering interactions between information seekers and answer providers.
翻译:各个组织都需要改进其产品、服务和流程。在这方面,与客户接触和理解其行程至关重要。各组织已经利用各种技术和技术支持客户参与,从呼叫中心到聊天室和虚拟代理。最近,这些系统利用机器学习(ML)和自然语言处理(NLP)来分析大量客户反馈和接触数据。目标是从背景上了解客户,并在各个渠道提供有意义的答案。尽管在交流人工智能(AI)和建议系统(RS)方面有多重进展,但是在客户旅途中了解客户问题背后的意图仍然具有挑战性。为了应对这一挑战,我们在本文中研究和分析了交流建议咨询系统(CRS)的近期工作,更具体地说,是在聊天室的CRS。我们引入了一条管道,在交谈中将投入的语句内容与背景化联系起来。我们随后又迈出了一步,利用反向特征工程将背景化的投入和学习模式联系起来,以支持意向识别。由于业绩评估是在不同的ML模型的基础上完成的,我们使用变换式基模型来评估对话系统中的拟议互动方式。