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Distributed Formal Concept Analysis Algorithms Based on an Iterative MapReduce Framework

机译:基于迭代MapReduce框架的分布式形式概念分析算法

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While many existing formal concept analysis algorithms are efficient, they are typically unsuitable for distributed implementation. Taking the MapReduce (MR) framework as our inspiration we introduce a distributed approach for performing formal concept mining. Our method has its novelty in that we use a light-weight MapReduce runtime called Twister which is better suited to iterative algorithms than recent distributed approaches. First, we describe the theoretical foundations underpinning our distributed formal concept analysis approach. Second, we provide a representative exemplar of how a classic centralized algorithm can be implemented in a distributed fashion using our methodology: we modify Ganter's classic algorithm by introducing a family of MR* algorithms, namely MRGanter and MRGanter+ where the prefix denotes the algorithm's lineage. To evaluate the factors that impact distributed algorithm performance, we compare our MR* algorithms with the state-of-the-art. Experiments conducted on real datasets demonstrate that MRGanter+ is efficient, scalable and an appealing algorithm for distributed problems.
机译:尽管许多现有的形式概念分析算法是有效的,但它们通常不适合分布式实现。以MapReduce(MR)框架为灵感,我们介绍了一种用于执行正式概念挖掘的分布式方法。我们的方法具有新颖性,因为我们使用了称为Twister的轻量级MapReduce运行时,它比最近的分布式方法更适合迭代算法。首先,我们描述了我们的分布式形式概念分析方法的理论基础。其次,我们提供了一个代表性的示例,说明了如何使用我们的方法以分布式方式实现经典的集中式算法:我们通过引入一系列MR *算法家族(即MRGanter和MRGanter +)修改了Ganter的经典算法,其中前缀表示算法的血统。为了评估影响分布式算法性能的因素,我们将MR *算法与最新技术进行了比较。在真实数据集上进行的实验表明,MRGanter +是高效,可扩展的,并且是解决分布式问题的有吸引力的算法。

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