客户帮助台应用程序的自动问题回答

Lahiru Samarakoon, S. Kumarawadu, K. Pulasinghe
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引用次数: 8

摘要

本文介绍了一个闭域问答系统,该系统可作为商业机构客户帮助台自动化的第一步。尽管在过去十年中,人们对数据驱动的方法越来越感兴趣,以实现更自然的人机交互,但这种方法需要大量手动标记的关于用户如何与机器对话的代表性数据。然而,在系统开发的早期阶段,这是一个难以满足的强烈需求。我们在这里介绍的基于知识的方法旨在最大限度地利用组织中的客户服务代表(csr)提供的用户体验,因此不依赖于应用程序数据。该方法考虑了句法、词汇和形态的变化,以及允许在系统知识库中变化的同义词转导方式。基于排序算法和模式编写过程的查询理解方法考虑了自然语言意义的意图、上下文和内容成分以及词序。提出了一种基于遗传算法的排序参数定期更新方法,以适应用户查询性质随时间的变化。我们对部署在澳大利亚Exetel Pty Ltd.的真实企业帮助台环境中的系统进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated question answering for customer helpdesk applications
This paper describes a closed domain question answering system which can be used as the first step in automating a customer helpdesk of a commercial organization. Even though there has been an increasing interest in data-driven methods over the past decade to achieve more natural human-machine interactions, such methods require a large amount of manually labeled representative data on how user converses with a machine. However, this is a strong requirement that is difficult to be satisfied in the early phase of system development. The knowledge-based approach that we present here is aimed at maximally making use of the user experience available with the customer services representatives (CSRs) in the organization and hence not relying on application data. The approach takes into account the syntactic, lexical, and morphological variations, as well as a way of synonym transduction that is allowed to vary over the systems knowledgebase. The query understanding method, which is based on a ranking algorithm and a pattern writing process, takes into account the intent, context, and content components of natural language meaning as well as the word order. A genetic algorithm-based method is presented for regularly updating the ranking parameters to adapt to changes in the nature of users' queries over time. We present an evaluation of our system deployed in a real-world enterprise helpdesk environment at Exetel Pty Ltd., Australia.
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