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Conditional functional dependency discovery and data repair based on decision tree

机译:基于决策树的条件功能依赖发现和数据修复

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In the era of big data, the data sources are complex, the data qualities are problematic, and some data is not accurate, missing or involves error. Incorrect data has seriously affected the quality of data mining, resulting in a significant impact on decision making. There are many repair methods about the missing data. In them conditional functional dependency is an effective one and many research findings on how to find conditional functional dependencies have been found. This paper presents a method of constructing conditional functional dependencies based on decision tree association rules and it proves first that decision tree is equivalent to association rules, and then it constructs conditional functional dependencies by association rules. The association rules based on decision tree are gotten by data mining and they have some hidden features and can not be found by usual ways. Thus they have a certain value of application. The paper gives a construction method and experiments prove its effectiveness.
机译:在大数据时代,数据源非常复杂,数据质量存在问题,并且某些数据不准确,丢失或涉及错误。错误的数据严重影响了数据挖掘的质量,从而严重影响了决策制定。关于丢失的数据,有很多修复方法。在他们中,条件功能依赖是一种有效的方法,并且已经找到了许多有关如何找到条件功能依赖的研究成果。提出了一种基于决策树关联规则的条件功能依赖关系构造方法,首先证明了决策树等同于关联规则,然后通过关联规则构造条件功能依赖关系。基于决策树的关联规则是通过数据挖掘获得的,具有一些隐藏的特征,无法通过常规方式找到。因此它们具有一定的应用价值。给出了一种构造方法,并通过实验证明了其有效性。

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