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Comparison Of Multinomial Naive Bayes Algorithm And Logistic Regression For Intent Classification In Chatbot

机译:聊天机器人意图分类的多项朴素贝叶斯算法和逻辑回归比较

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Chatbot is software that communicates using natural language. chatbots such as machine conversation systems, Chatterbot, virtual agents, and dialogue systems. This software enables to simulate human conversations. In this research, the chatbot system that will be created must be able to understand the natural language of what is entered by the user, and the chatbot will answer according to what the user is expecting. The researcher proposes a classification method to identify intent rather than user input or called intent classification on the chatbot system; the researcher also wants to know the level of accuracy, precision, and recall on the evaluation results of both methods. The classification method applied in this research is the Naive Bayes method and compared with the Logistic Regression method to determine the class intention. The evaluation results show the level of accuracy precision and recall in the Logistic Regression model is higher than the Naive Bayes model.
机译:Chatbot是使用自然语言进行通信的软件。聊天机器人,例如机器对话系统,Chatterbot,虚拟代理和对话系统。该软件可以模拟人类对话。在这项研究中,将要创建的聊天机器人系统必须能够理解用户输入内容的自然语言,并且聊天机器人将根据用户的期望进行回答。研究人员提出了一种分类方法,用于识别聊天机器人系统上的意图而非用户输入或所谓的意图分类。研究人员还希望了解两种方法的评估结果的准确性,准确性和召回率。本研究中使用的分类方法是朴素贝叶斯方法,并与Logistic回归方法进行比较,以确定班级意图。评估结果表明,Logistic回归模型的准确性和召回率高于朴素贝叶斯模型。

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