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A Machine Learning Approach to SPARQL Query Performance Prediction

机译:一种SPARQL查询性能预测的机器学习方法

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In this paper we address the problem of predicting SPARQL query performance. We use machine learning techniques to learn SPARQL query performance from previously executed queries. Traditional approaches for estimating SPARQL query cost are based on statistics about the underlying data. However, in many use-cases involving querying Linked Data, statistics about the underlying data are often missing. Our approach does not require any statistics about the underlying RDF data, which makes it ideal for the Linked Data scenario. We show how to model SPARQL queries as feature vectors, and use k-nearest neighbors regression and Support Vector Machine with the nu-SVR kernel to accurately predict SPARQL query execution time.
机译:在本文中,我们解决了预测SPARQL查询性能的问题。我们使用机器学习技术从先前执行的查询中了解SPARQL查询性能。估计SPARQL查询成本的传统方法是基于有关基础数据的统计信息。但是,在涉及查询链接数据的许多用例中,通常缺少有关基础数据的统计信息。我们的方法不需要有关基础RDF数据的任何统计信息,这使其非常适合“链接数据”方案。我们展示了如何将SPARQL查询建模为特征向量,并使用k最近邻回归和支持向量机与nu-SVR内核一起准确预测SPARQL查询的执行时间。

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