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A Learning-Based Framework for Improving Querying on Web Interfaces of Curated Knowledge Bases

机译:基于学习的框架,用于改进策划知识库的Web界面查询

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Knowledge Bases (KBs) are widely used as one of the fundamental components in Semantic Web applications as they provide facts and relationships that can be automatically understood by machines. Curated knowledge bases usually use Resource Description Framework (RDF) as the data representation model. To query the RDF-presented knowledge in curated KBs, Web interfaces are built via SPARQL Endpoints. Currently, querying SPARQL Endpoints has problems like network instability and latency, which affect the query efficiency. To address these issues, we propose a client-side caching framework, SPARQL Endpoint Caching Framework (SECF), aiming at accelerating the overall querying speed over SPARQL Endpoints. SECF identifies the potential issued queries by leveraging the querying patterns learned from clients' historical queries and prefecthes/caches these queries. In particular, we develop a distance function based on graph edit distance to measure the similarity of SPARQL queries. We propose a feature modelling method to transform SPARQL queries to vector representation that are fed into machine-learning algorithms. A time-aware smoothing-based method, Modified Simple Exponential Smoothing (MSES), is developed for cache replacement. Extensive experiments performed on real-world queries showcase the effectiveness of our approach, which outperforms the state-of-the-art work in terms of the overall querying speed.
机译:知识库(KBS)被广泛用作语义Web应用中的基本组件之一,因为它们提供了机器可以自动理解的事实和关系。策划知识库通常使用资源描述框架(RDF)作为数据表示模型。查询策划KBS中的RDF呈现的知识,通过SPARQL端点构建Web接口。目前,查询SPARQL端点存在类似于网络不稳定和延迟的问题,影响查询效率。为解决这些问题,我们提出了一个客户端缓存框架,SPARQL端点缓存框架(SECF),旨在加速SPARQL端点的整体查询速度。 Secf通过利用来自客户历史查询和县的查询模式和缓存这些查询来识别潜在的查询。特别是,我们基于图表编辑距离开发距离功能以测量SparQL查询的相似性。我们提出了一种特征建模方法来将SPARQL查询转换为向馈入机器学习算法的向量表示。为缓存替换开发了一种时间感知平滑的方法修改简单指数平滑(MSES)。对现实世界查询进行了广泛的实验,展示了我们的方法的有效性,这在整体查询速度方面优于最先进的工作。

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