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Empirical studies to assess the understandability of data warehouse schemas using structural metrics

机译:使用结构指标评估数据仓库模式的可理解性的经验研究

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Data warehouses are powerful tools for making better and faster decisions in organizations where information is an asset of primary importance. Due to the complexity of data warehouses, metrics and procedures are required to continuously assure their quality. This article describes an empirical study and a replication aimed at investigating the use of structural metrics as indicators of the understandability, and by extension, the cognitive complexity of data warehouse schemas. More specifically, a four-step analysis is conducted: (1) check if individually and collectively, the considered metrics can be correlated with schema understandability using classical statistical techniques, (2) evaluate whether understandability can be predicted by case similarity using the case-based reasoning technique, (3) determine, for each level of understandability, the subsets of metrics that are important by means of a classification technique, and assess, by means of a probabilistic technique, the degree of participation of each metric in the understandability prediction. The results obtained show that although a linear model is a good approximation of the relation between structure and understandability, the associated coefficients are not significant enough. Additionally, classification analyses reveal respectively that prediction can be achieved by considering structure similarity, that extracted classification rules can
机译:数据仓库是功能强大的工具,可在信息是最重要的资产的组织中制定更好,更快的决策。由于数据仓库的复杂性,需要使用指标和过程来连续保证其质量。本文介绍了一项实证研究和复制,旨在研究使用结构性指标作为可理解性指标,并以此扩展数据仓库架构的认知复杂性指标。更具体地讲,进行了四步分析:(1)使用经典的统计技术检查所考虑的指标是否可以单独或集体地与模式可理解性相关;(2)使用案例-评估案例相似性是否可以预测可理解性-基于推理的技术,(3)通过分类技术确定每个级别的易懂性指标的重要子集,并通过概率技术评估每个指标在可理解性预测中的参与程度。获得的结果表明,尽管线性模型很好地近似了结构和可理解性之间的关系,但是相关系数并不足够显着。另外,分类分析分别揭示了可以通过考虑结构相似性来实现预测,提取的分类规则可以

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