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An empirical experimentation towards predicting understandability of conceptual schemas using quality metric

机译:使用质量指标预测概念图式可理解性的实验

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摘要

Data warehouse are used in organisations for efficient information delivery. The quality of a data warehouse is governed by the quality of conceptual, logical and physical data models. Conceptual model forms the base for design of logical/physical models. The conceptual model quality is assessed using quality metrics. The metrics for assessing the quality of conceptual schemas are based on size/structural complexity of schemas. Various statistical techniques show the existence of significant relationship between quality metrics and understanding time of conceptual models. In this paper, the authors analyse the ability of quality metrics in predicting the understandability of conceptual schemas using experimental empirical approach. Various statistical techniques are used for study and analysis. The results of empirical analysis show that few of the metrics are strong indicators for predicting the understandability of conceptual multidimensional models.
机译:数据仓库在组织中用于有效的信息传递。数据仓库的质量取决于概念,逻辑和物理数据模型的质量。概念模型构成了逻辑/物理模型设计的基础。使用质量指标评估概念模型的质量。评估概念图的质量的度量基于图的大小/结构复杂性。各种统计技术表明,质量指标与概念模型的理解时间之间存在显着的关系。在本文中,作者分析了质量度量在使用实验性经验方法预测概念图式的可理解性方面的能力。各种统计技术用于研究和分析。实证分析的结果表明,很少有度量标准可用于预测概念性多维模型的可理解性。

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