Exploiting local similarity for indexing paths in graph-structured data

R. Kaushik, P. Shenoy, P. Bohannon, E. Gudes
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引用次数: 295

Abstract

XML and other semi-structured data may have partially specified or missing schema information, motivating the use of a structural summary which can be automatically computed from the data. These summaries also serve as indices for evaluating the complex path expressions common to XML and semi-structured query languages. However, to answer all path queries accurately, summaries must encode information about long, seldom-queried paths, leading to increased size and complexity with little added value. We introduce the A(k)-indices, a family of approximate structural summaries. They are based on the concept of k-bisimilarity, in which nodes are grouped based on local structure, i.e., the incoming paths of length up to k. The parameter k thus smoothly varies the level of detail (and accuracy) of the A(k)-index. For small values of k, the size of the index is substantially reduced. While smaller, the A(k) index is approximate, and we describe techniques for efficiently extracting exact answers to regular path queries. Our experiments show that, for moderate values of k, path evaluation using the A(k)-index ranges from being very efficient for simple queries to competitive for most complex queries, while using significantly less space than comparable structures.
利用图结构数据中索引路径的局部相似性
XML和其他半结构化数据可能有部分指定的或缺失的模式信息,这促使使用可以从数据自动计算的结构化摘要。这些摘要还用作索引,用于评估XML和半结构化查询语言中常见的复杂路径表达式。然而,为了准确地回答所有的路径查询,摘要必须编码关于长且很少查询的路径的信息,这会导致大小和复杂性的增加,而附加值却很少。我们引入了A(k)指标,一类近似的结构摘要。它们基于k-双相似性的概念,其中节点根据局部结构分组,即长度不超过k的传入路径。因此,参数k平滑地改变A(k)索引的详细程度(和精度)。对于较小的k值,索引的大小会大大减小。虽然较小,但A(k)索引是近似值,并且我们描述了有效提取常规路径查询的精确答案的技术。我们的实验表明,对于k的中等值,使用A(k)-索引的路径评估范围从对简单查询非常有效到对大多数复杂查询具有竞争力,同时比可比结构使用更少的空间。
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