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The PVAD Algorithm to Learn Partial-Value Variable Associations with Application to Modelling for Engineering Retention

机译:用于学习局部值可变关联的PVAD算法,应用于工程保留的建模

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Existing data analytic techniques are mostly based on building the same one model of variable relations over the full ranges of all variable values, although relations of variables may exist only for certain values of variables or different relations exist for different values of variables. This paper presents the Partial-Value Association Discovery (PVAD) algorithm which discovers variable relations/associations that exist in partial ranges of variable values from large amounts of data in a computationally efficient way. The PVAD algorithm allows building a structural model of partial- and full-value variable associations in multiple layers that captures individual and interactive effects of multiple variables by learning from data. The application of the PVAD algorithm to the analysis of engineering student data for engineering retention is also presented.
机译:现有数据分析技术主要基于构建与所有变量值的完整范围内的相同的可变关系模型,尽管变量的关系可能仅存在于某些变量值或不同的变量值存在不同关系。本文介绍了部分值关联发现(PVAD)算法,其以计算有效的方式从大量数据中发现的可变关系/关联中存在的可变关系/关联。 PVAD算法允许在多个层中构建部分和全价变量关联的结构模型,通过从数据学习捕获多个变量的个体和交互式效果。 PVAD算法在工程学生数据分析中的应用还介绍了工程保留。

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