通过对数据依赖性的推理自动生成中介模式

Xiang Li, C. Quix, D. Kensche, Sandra Geisler, Lisong Guo
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引用次数: 7

摘要

中介模式位于公认的数据集成体系结构的中心。经典的数据集成系统依赖于由人类专家通过密集的设计过程创建的中介模式。自动生成中介模式仍然是一个有待实现的目标。我们通过合并由元组生成依赖项(tgds)相互关联的多个源模式来生成中介模式。模式合并是将多个模式合并到统一视图中的过程。当模式是高度异构和自治的时,任务变得特别具有挑战性。现有的方法在很多方面都存在不足,比如输入映射的表达性受限、缺乏数据级解释、输出映射不是用逻辑语言(或者根本没有给出),以及局限于二进制合并。本文提出了一种新颖的系统,该系统能够使用P2P样式的tgds作为输入来执行本机n-元模式合并。适合于为数据集成生成中介模式的场景,系统选择最小的模式签名,保留连接查询的所有特定答案。生成逻辑输出映射以支持中介模式,从而支持查询应答,并在某些情况下支持查询重写。
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Automatic generation of mediated schemas through reasoning over data dependencies
Mediated schemas lie at the center of the well recognized data integration architecture. Classical data integration systems rely on a mediated schema created by human experts through an intensive design process. Automatic generation of mediated schemas is still a goal to be achieved. We generate mediated schemas by merging multiple source schemas interrelated by tuple-generating dependencies (tgds). Schema merging is the process to consolidate multiple schemas into a unified view. The task becomes particularly challenging when the schemas are highly heterogeneous and autonomous. Existing approaches fall short in various aspects, such as restricted expressiveness of input mappings, lacking data level interpretation, the output mapping is not in a logical language (or not given at all), and being confined to binary merging. We present here a novel system which is able to perform native n-ary schema merging using P2P style tgds as input. Suited in the scenario of generating mediated schemas for data integration, the system opts for a minimal schema signature retaining all certain answers of conjunctive queries. Logical output mappings are generated to support the mediated schemas, which enable query answering and, in some cases, query rewriting.
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