基于随机森林和快速自动关键字提取的虚拟旅行助手聊天机器人

D. Maylawati, Anjany Risqiati, C. Slamet, M. Ramdhani, N. Lukman, P. Dauni, Nunik Destria Arianti
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引用次数: 2

摘要

本研究的目的是通过实现随机森林(RF)算法和快速自动关键字提取(RAKE)来创建一个基于web的聊天机器人应用程序。该聊天机器人应用程序将被用来成为印度尼西亚万隆旅游景点的虚拟导游。这是因为对信息的需求对大多数人来说是非常重要的,以帮助和加快工作的完成。本研究使用的数据是一组数据,以问题的形式多达192个数据。数据集分为150个训练数据和42个测试数据。RF算法将作为一个意图分类器,而RAKE将作为一个实体识别器来确定用户的答案。在预处理过程后,使用训练和测试数据场景对分类模型进行评估,例如案例折叠、去除正则表达式、单词标记化和停止词去除。利用混淆矩阵的评价表明,使用RF和RAKE的聊天机器人应用程序的平均准确率值为98%,精度值为96%,召回值为96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chatbot for Virtual Travel Assistant with Random Forest and Rapid Automatic Keyword Extraction
The purpose of this research is to create a web- based Chatbot application by implementing the Random Forest (RF) algorithm and Rapid Automatic Keyword Extraction (RAKE). The chatbot application will be used to become a virtual tour guide regarding tourist objects in Bandung, Indonesia. This is because the need for information is very important for most people to help and accelerate the work to be done. The data used in this research is a set of data in the form of questions as many as 192 data. The dataset is divided into training and testing data of 150 and 42 data. RF algorithm will work as an intent classifier, and RAKE will work as an entity recognizer to determine the answer to the user. The classification model is evaluated using training and testing data scenarios after the pre-processing process, such as case folding, removing regular expression, word tokenizing, and stop-words removal. The evaluation using the confusion matrix shows that an average accuracy value of the chatbot application using RF and RAKE is 98%, the precision value is 96%, and a recall value is 96%.
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