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AIML and Sequence-to-Sequence Models to Build Artificial Intelligence Chatbots: Insights from a Comparative Analysis

机译:AIML和序列到序列模型来构建人工智能聊天机器人:来自比较分析的见解

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A chatbot is a software that is able to autonomously communicate with a human being through text and due to its usefulness, an increasing number of businesses are implementing such tools in order to provide timely communication to their clients. In the past, whilst literature has focused on implementing innovative chatbots and the evaluation of such tools, limited studies have been done to critically comparing such conversational systems. In order to address this gap, this study critically compares the Artificial Intelligence Markup Language (AIML), and Sequence-to-Sequence models for building chatbots. In this endeavor, two chatbots were developed to implement each model and were evaluated using a mixture of glass box and black box evaluation, based on 3 metrics, namely, user's satisfaction, the information retrieval rate, and the task completion rate of each chatbot. Results showed that the AIML chatbot ensured better user satisfaction, and task completion rate, while the Sequence-to-Sequence model had better information retrieval rate.
机译:聊天机器人是一种能够通过文本与人类进行自主交流的软件,并且由于其实用性,越来越多的企业正在实施此类工具,以便及时为其客户提供交流。过去,尽管文献集中在实现创新的聊天机器人和对此类工具的评估上,但进行了有限的研究以严格地比较此类对话系统。为了解决这一差距,本研究严格地比较了人工智能标记语言(AIML)和用于构建聊天机器人的序列到序列模型。为此,开发了两个聊天机器人来实现每个模型,并根据用户满意度,信息检索率和每个聊天机器人的任务完成率这三个指标,使用玻璃盒和黑盒的混合评估来进行评估。结果表明,AIML聊天机器人可确保更好的用户满意度和任务完成率,而“序列到序列”模型的信息检索率更高。

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