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Mining Frequent δ-Free Patterns in Large Databases

机译:在大型数据库中挖掘频繁的无δ模式

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摘要

Mining patterns under constraints in large data (also called fat data) is an important task to benefit from the multiple uses of the patterns embedded in these data sets. It is a difficult task due to the exponential growth of the search space according to the number of attributes. From such contexts, closed patterns can be extracted by using the properties of the Galois connections. But, from the best of our knowledge, there is no approach to extract interesting patterns like δ-free patterns which are on the core of a lot of relevant rules. In this paper, we propose a new method based on an efficient way to compute the extension of a pattern and a pruning criterion to mine frequent δ-free patterns in large databases. We give an algorithm (FTMINER) for the practical use of this method. We show the efficiency of this approach by means of experiments on benchmarks and on gene expression data.
机译:大数据(也称为胖数据)在约束条件下的挖掘模式是一项重要任务,可以从这些数据集中嵌入的模式的多种使用中受益。由于搜索空间根据属性的数量呈指数增长,因此这是一项艰巨的任务。从这样的上下文中,可以通过使用Galois连接的属性来提取闭合模式。但是,据我们所知,还没有方法可以提取有趣的模式,例如无δ模式,它是许多相关规则的核心。在本文中,我们提出了一种基于有效方式来计算模式扩展和修剪准则的新方法,以在大型数据库中挖掘频繁的无δ模式。我们为该方法的实际应用提供了一种算法(FTMINER)。我们通过在基准和基因表达数据上进行实验来证明这种方法的有效性。

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