Machine Learning of SPARQL Templates for Question Answering Over LinkedSpending

Roberto Cocco, M. Atzori, C. Zaniolo
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引用次数: 8

Abstract

We present a Question Answering system aimed to answer natural language questions over the open RDF spending data provided by LinkedSpeding. We propose an original machine-learning approach to learn generalized SPARQL templates from an existing training set of (NL question, SPARQL query) pairs. In our approach, the generalized SPARQL templates are fed to an instance-based classifier that associates a given user-provided question to an existing pair that is used to answer the user question. We employ an external tagger, delegating the Named-Entity Recognition (NER) task to a service developed for the domain we want to query. The problem is particularly challenging due to the small training set size available, counting only 100 questions/SPARQL queries. We illustrate the results of our new approach using data provided by the Question Answering over Linked Data challenge (QALD-6) task 3, showing that we can provide a correct answer to 14 of the 50 questions of the test set. These results are then compared to existing systems, including our previous system, QA3, where templates were provided by an expert rather than being generated automatically from a training set.
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基于LinkedSpending的SPARQL问答模板的机器学习
我们提出了一个问答系统,旨在通过LinkedSpeding提供的开放RDF支出数据来回答自然语言问题。我们提出了一种原始的机器学习方法,从现有的训练集(NL问题,SPARQL查询)对中学习通用SPARQL模板。在我们的方法中,将通用SPARQL模板提供给基于实例的分类器,该分类器将给定的用户提供的问题与用于回答用户问题的现有对关联起来。我们使用一个外部标记器,将命名实体识别(NER)任务委托给为我们想要查询的领域开发的服务。由于可用的训练集规模很小,只有100个问题/SPARQL查询,因此这个问题特别具有挑战性。我们使用关联数据问答挑战(QALD-6)任务3提供的数据说明了我们的新方法的结果,表明我们可以为测试集的50个问题中的14个提供正确答案。然后将这些结果与现有系统进行比较,包括我们之前的系统QA3,其中模板是由专家提供的,而不是从训练集中自动生成的。
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