The Potential of Chatbots: Analysis of Chatbot Conversations

Mubashara Akhtar, J. Neidhardt, H. Werthner
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引用次数: 20

Abstract

The idea of utilizing computers for question answering tasks has been around from the early beginning of these systems. First algorithms with the aim to accomplish this were already implemented in the early 1960s. In recent years, chatbots have been gaining enormous popularity in various fields. In the context of business applications, they are considered as useful tools for improving customer relationships. In this paper, chat conversations between customers and the chatbot of a telecommunication company are analysed to find out if these interactions can be used to determine a) users' topics of interests and b) user satisfaction. To reach this goal, chat conversations are interpreted as sequences of events and user inputs are analysed with the help of text mining techniques. The study shows that based on users' written conversational contributions, valuable insights on users' interests and satisfaction can be gained. The majority of users leave the chat conversation after a short period of time if the chatbot was not able to give the desired answer right away. Moreover, a huge number of conversations deal with similar topics. Our results imply that companies offering chatbots must thoroughly analyse the collected data to gain more insights into their customers' needs. Based on our findings, they can improve customers' satisfaction by offering personalized service and implementing real-time feedback.
聊天机器人的潜力:聊天机器人对话分析
从这些系统的早期开始,利用计算机进行问答任务的想法就已经存在了。第一批旨在实现这一目标的算法在20世纪60年代初就已经实现了。近年来,聊天机器人在各个领域都获得了极大的普及。在业务应用程序的上下文中,它们被认为是改善客户关系的有用工具。在本文中,客户和电信公司的聊天机器人之间的聊天对话进行了分析,以找出这些交互是否可以用来确定a)用户的兴趣话题和b)用户满意度。为了实现这一目标,聊天对话被解释为事件序列,并在文本挖掘技术的帮助下分析用户输入。研究表明,基于用户的书面会话贡献,可以获得关于用户兴趣和满意度的有价值的见解。如果聊天机器人不能马上给出想要的答案,大多数用户会在很短的时间后离开聊天。此外,大量的对话涉及类似的话题。我们的研究结果表明,提供聊天机器人的公司必须彻底分析收集到的数据,以更深入地了解客户的需求。根据我们的研究结果,他们可以通过提供个性化服务和实施实时反馈来提高客户满意度。
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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