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A Quick Algorithm on Generating Concept Lattice for Attribute-Incremental Streaming Data

机译:属性增量流数据生成概念格的快速算法

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摘要

The explosive information growth facilitates the generation of increasingly massive streaming data. As a traditional soft computing approach for data analysis, Formal Concept Analysis (FCA) has the severe problem of low efficiency and long time for coping with massive streaming data. Therefore, devising an optimized efficiency algorithm of FCA for attribute-incremental streaming data is becoming a very urgent and challenging issue. In this paper, a quick algorithm on generating concept lattice for attribute-incremental streaming data is presented. Specifically, the correctness of the proposed algorithm is mathematically proved, and several real-world data sets are utilized in our experiments in order to compare with the existing two FCA algorithms. Experimental results demonstrate that the proposed algorithm significantly improves the efficiency for generating concept lattice of attribute-incremental streaming data. Particularly, the running time could be reduced by approximately 44% for Jazz dataset.
机译:爆炸性的信息增长促进了日益庞大的流数据的生成。作为用于数据分析的传统软计算方法,形式化概念分析(FCA)存在严重的问题,即处理大量流数据的效率低且时间长。因此,为属性增量式流数据设计FCA的优化效率算法正成为一个非常紧迫和具有挑战性的问题。本文提出了一种用于属性增量流数据生成概念格的快速算法。具体来说,该算法的正确性在数学上得到了证明,并且在我们的实验中利用了几个真实世界的数据集,以便与现有的两种FCA算法进行比较。实验结果表明,该算法显着提高了属性增量流数据概念格的生成效率。特别是,对于Jazz数据集,运行时间可以减少大约44%。

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