基于面部美容产品知识图谱的印尼问答系统

Mahanti Indah Rahajeng, A. Purwarianti
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引用次数: 2

摘要

问答系统是为了从自然语言问题中寻找正确答案而开发的。QA系统可用于构建聊天机器人甚至搜索引擎。在本研究中,我们使用Anindya Knowledge Graph作为数据源,构建了一个印尼语的QA系统。这个QA系统背后的思想是将问题转换为SPARQL查询。该方案由问题分类、信息提取、标记映射和查询构造四个模块组成。使用支持向量机、LSTM和微调IndoBERT对问题分类和信息提取模块进行了实验。还对文本表示进行了测试,以在tf-idf、FastText和IndoBERT中找到最佳结果。在我们的实验中,我们发现微调IndoBERT模型在问题分类和信息提取两个模块上都获得了最好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indonesian Question Answering System for Factoid Questions using Face Beauty Products Knowledge Graph
Question answering (QA) system is developed to find the right answers from natural language questions. QA systems can be used for building chatbots or even search engines. In this study, we’ve built an Indonesian QA system that uses Anindya Knowledge Graph as its data source. The idea behind this QA system is translating questions into SPARQL queries. The proposed solution consists of four modules, namely question classification, information extraction, token mapping, and query construction. The question classification and the information extraction modules were experimented using SVM, LSTM, and fine-tuning IndoBERT. The text representations were also tested to find the best result among tf-idf, FastText, and IndoBERT. In our experiment, we found that the fine-tuning IndoBERT model had obtained the best performance on both question classification and information extraction modules.
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