智能对话聊天机器人合成中人机交互特性研究

I. Sidenko, G. Kondratenko, Pavlo Kushneryk, Y. Kondratenko
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引用次数: 9

摘要

人机交互和机器学习领域的研究促进了聊天机器人的复兴。他们是虚拟的对话者,他们的逻辑装置是基于人工智能的。然而,最近的评论显示,聊天机器人被认为是不明智的系统。这些结果促成了聊天机器人在社交网络中的快速引入。同时,选择神经网络的结构、人机交互的原理和特征来学习对话系统仍然是一个重要的问题。本文对各种神经网络结构进行了比较,并开发了一种基于注意机制的编码器-解码器结构的聊天机器人。对于实现,使用Python编程语言。TensorFlow框架用于深度学习。仿真结果验证了该方法在语音识别和人机交互方面的有效性。
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Peculiarities of Human Machine Interaction for Synthesis of the Intelligent Dialogue Chatbot
Research in the field of human machine interaction and machine learning contributed to the revival of the chatbots. They are virtual interlocutors whose logical apparatus is based on artificial intelligence. However, recent reviews show that chatbots are perceived as unwise systems. These results contributed to the rapid introduction of chatbots in social networks. At the same time, the question of choosing the structure of a neural network for learning dialogue systems, the principles and features of human machine interaction remains important. In this paper various architectures of neural networks are being compared, and it's own chatbot using encoder-decoder architecture with attention mechanism is developed. For implementation, the Python programming language is used. TensorFlow framework is used for deep learning. The simulation results confirm the effectiveness of the proposed approach to speech recognition and human machine interaction.
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