Implementation of Artificial Intelligence Based Chatbot System With Long Term Memory

Manish Gupta, Pravin Bhilare, Shruti Katkade, Urjita Kerkar, Payel Thakur
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引用次数: 0

Abstract

This paper mainly explores a specific deep learning method to build a conversational agent. Nowadays the popularity of chatbot systems is on rise as they attempt to get into daily life and achieve some commercial success. Previous approaches used simple keywords & pattern matching methodologies, answering in a static manner irrespective of previous conversions. As an improvement to this technology would be a system that will work with sequence to sequence framework. Our proposed model makes use of this framework. Given the previous sentence or sentences and the next sentence in a conversation, the model converses by predicting the next sentence. The distinctive feature of our model is that it can be trained end-to-end hence requires much fewer hand-crafted rules. This straight forward model can generate simple conversations given a large conversational training dataset.
基于人工智能的长时记忆聊天机器人系统的实现
本文主要探讨了一种具体的深度学习方法来构建会话代理。如今,聊天机器人系统的普及程度正在上升,因为它们试图进入日常生活并取得一些商业成功。以前的方法使用简单的关键字&模式匹配方法,以静态方式回答,而不考虑先前的转换。作为这项技术的改进,将是一个系统,将工作与序列到序列的框架。我们提出的模型利用了这个框架。给定对话中的前一个或多个句子和下一个句子,该模型通过预测下一个句子来进行反转。我们模型的独特之处在于它可以端到端进行训练,因此需要的手工规则要少得多。这个简单的模型可以生成简单的会话,给定一个大的会话训练数据集。
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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