基于经典和神经网络的聊天机器人技术的比较分析

Imran ullah Khan, Junaid Javed, Ahthasham Sajid, Shahnoor, Iqra Tabassum
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摘要

像亚马逊的Alexa、苹果的Siri、谷歌的Assistant和微软的Cortana这样的对话代理在对话代理方面展示了非凡的研究和潜力。会话代理、聊天机器人或聊天机器人是一种计算机软件,旨在以与人相当的智能水平进行交流。聊天机器人被设计用于各种目的,比如任务导向的助手和开放式话语的创造者。已经研究了许多方法,从原始类型的硬编码响应生成器到构建人工智能的现代方法。这些系统分为基于规则的系统和基于神经网络的系统。与基于规则的技术(基于预定义的模板和响应)不同,神经网络方法基于深度学习模型。基于规则的交流最适合更直接的、以任务为导向的对话。开放域会话建模是一个更加复杂的主题,它在很大程度上依赖于神经网络技术。本文首先概述聊天机器人,然后深入讨论各种传统的、基于规则的和基于神经网络的方法的细节。一个表格总结了以前的实地调查,结束了调查。它着眼于关于该主题的最新和重要的研究,所使用的评价工具,需要改进的领域,以及所提议的方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Classical and Neural Networks based ChatBot’s Techniques
Conversational agents like Alexa from Amazon, Siri from Apple, Assistant from Google, and Cortana from Microsoft demonstrate extraordinary research and potential in conversational agents. A conversational agent, chatter-bot, or chatbot is a piece of computer software supposed to communicate at a level of intelligence comparable to a person's. Chatbots are designed for various purposes, such as task-oriented helpers and creators of open-ended discourse. Numerous approaches have been studied, from primitive types of hard-coded response generators to contemporary ways of constructing artificial intelligence. These are classified as rule-based or neural network-based systems. Unlike the rule-based technique, which is based on pre-defined templates and responses, the neural network approach is based on deep learning models. Rule-based communication is optimal for more straightforward, task-oriented conversations. Open-domain conversational modeling is a more complicated topic that depends heavily on neural network techniques. This article begins with an overview of chatbots before diving into the specifics of a variety of traditional, rule-based, and neural network-based methods. A table summarising previous field research closes the survey. It looks at the most recent and vital research on the subject, the evaluation instruments used areas for improvement, and the applicability of the proposed methods.
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