AI Affective Conversational Robot with Hybrid Generative-Based and Retrieval-Based Dialogue Models

Min-Yuh Day, Chi-Sheng Hung
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引用次数: 2

Abstract

ChatBot technology has become a widely used in various application fields. An important topic in the research on conversational robots is the improvement of their temperature during operation for enhanced user interaction. In this study, we propose an artificial intelligence affective conversational robot (AIACR), which is an integration of an artificial intelligence deep learning sentiment analysis model and generative-and retrieval-based dialogue models. The sentiment analysis model developed in this study uses three models, namely, multilayer perceptron (MLP), long short-term memory (LSTM) and bidirectional long short-term memory (BiLSTM). Moreover, word2vec and semantics are utilized as the basis for similarity ranking models. The deep learning dialogue model, sentiment analysis model, and similarity model were integrated and compared as well. The experimental results show that the sentiment analysis model, similarity model, and dialogue model respectively utilize BiLSTM, word2vec, and the retrieval-based model to achieve the best dialogue performance. The major research contributions of this study are the developed AIACR and the proposed affective conversational robot index (ACR Index) as a criterion for evaluating the effectiveness of emotional dialogue robots.
基于生成和检索混合对话模型的AI情感会话机器人
聊天机器人技术已广泛应用于各个应用领域。在会话机器人的研究中,一个重要的课题是提高会话机器人在操作过程中的温度,以增强与用户的交互。在本研究中,我们提出了一种人工智能情感会话机器人(AIACR),它是人工智能深度学习情感分析模型和基于生成和检索的对话模型的集成。本研究建立的情感分析模型采用多层感知机(MLP)、长短期记忆(LSTM)和双向长短期记忆(BiLSTM)三种模型。此外,还利用word2vec和semantics作为相似度排序模型的基础。对深度学习对话模型、情感分析模型和相似度模型进行了集成和比较。实验结果表明,情感分析模型、相似度模型和对话模型分别利用BiLSTM、word2vec和基于检索的模型实现了最佳的对话性能。本研究的主要研究贡献是开发了AIACR,并提出了情感对话机器人指数(ACR指数)作为评估情感对话机器人有效性的标准。
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