Employing Dependency Tree in Machine Learning Based Indonesian Factoid Question Answering

Irfan Afif, A. Purwarianti
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引用次数: 2

Abstract

We proposed the usage of dependency tree information to increase the accuracy of Indonesian factoid question answering. We employed MSTParser and Universal Dependency corpus to build the Indonesian dependency parser. The dependency tree information as the result of the Indonesian dependency parse is used in the answer finder component of Indonesian factoid question answering system. Here, we used dependency tree information in two ways: 1) as one of the features in machine learning based answer finder (classifying each term in the retrieved passage as part of a correct answer or not); 2) as an additional heuristic rule after conducting the machine learning technique. For the machine learning technique, we combined word based calculation, phrase based calculation and similarity dependency relation based calculation as the complete features. Using 203 data, we were able to enhance the accuracy for the Indonesian factoid QA system compared to related work by only using the phrase information. The best accuracy was 84.34% for the correct answer classification and the best MRR was 0.954.
依赖树在机器学习印尼语Factoid问答中的应用
我们提出使用依赖树信息来提高印尼语题答的准确性。我们使用MSTParser和通用依赖语料库来构建印尼语依赖解析器。作为印尼语依赖项解析结果的依赖树信息用于印尼语factoid问答系统的答案查找器组件。在这里,我们以两种方式使用依赖树信息:1)作为基于机器学习的答案查找器的特征之一(将检索到的段落中的每个术语分类为正确答案的一部分);2)作为进行机器学习技术后的附加启发式规则。对于机器学习技术,我们将基于词的计算、基于短语的计算和基于相似依赖关系的计算结合起来作为完整的特征。使用203个数据,与仅使用短语信息的相关工作相比,我们能够提高印度尼西亚factoid QA系统的准确性。正确答案分类的最佳准确率为84.34%,最佳MRR为0.954。
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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