Implementation of Tuned Schema Merging Approach

N. Masood, Gul Jabeen
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Abstract

Schema merging is a process of integrating multiple data sources into a GCS (Global Conceptual Schema). It is pivotal to various application domains, like data ware housing and multi-databases. Schema merging requires the identification of corresponding elements, which is done through schema matching process. In this process, corresponding elements across multiple data sources are identified after the comparison of these data sources with each other. In this way, for a given set of data sources and the correspondence between them, different possibilities for creating GCS can be achieved. In applications like multi-databases and data warehousing, new data sources keep joining in and GCS relations are usually expanded horizontally or vertically. Schema merging approaches usually expand GCS relations horizontally or vertically as new data sources join in. As a result of such expansions, an unbalanced GCS is created which either produces too much NULL values in response to global queries or a result of too many Joins causes poor query processing. In this paper, a novel approach, TuSMe (Tuned Schema Merging) technique is introduced to overcome the above mentioned issue via developing a balanced GCS, which will be able to control both vertical and horizontal expansion of GCS relations. The approach employs a weighting mechanism in which the weights are assigned to individual attributes of GCS. These weights reflect the connectedness of GCS attributes in accordance with the attributes of the principle data sources. Moreover, the overall strength of the GCS could be scrutinized by combining these weights. A prototype implementation of TuSMe shows significant improvement against other contemporary state-of-the-art approaches.
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调优模式合并方法的实现
模式合并是将多个数据源集成到GCS(全局概念模式)中的过程。它是各种应用领域的关键,如数据仓库和多数据库。模式合并需要识别相应的元素,这是通过模式匹配过程来完成的。在此过程中,通过对多个数据源进行比较,确定多个数据源之间对应的元素。通过这种方式,对于给定的一组数据源及其之间的对应关系,可以实现创建GCS的不同可能性。在多数据库和数据仓库等应用中,新的数据源不断加入,GCS关系通常横向或纵向扩展。模式合并方法通常在新数据源加入时水平或垂直扩展GCS关系。这种扩展的结果是,创建了一个不平衡的GCS,它要么在响应全局查询时产生太多的NULL值,要么由于太多的join导致查询处理不良。本文引入了一种新的方法,即TuSMe(调谐模式合并)技术,通过开发一个平衡的GCS来克服上述问题,该方法能够控制GCS关系的垂直和水平扩展。该方法采用加权机制,将权重分配给GCS的各个属性。这些权重根据主要数据源的属性反映了GCS属性的连通性。此外,GCS的整体强度可以通过组合这些权重来仔细检查。TuSMe的原型实现与其他当代最先进的方法相比有了显著的改进。
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