Parallel Inferencing for OWL Knowledge Bases

R. Soma, V. Prasanna
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引用次数: 85

Abstract

We examine the problem of parallelizing the inferencing process for OWL knowledge-bases. A key challenge in this problem is partitioning the computational workload of this process to minimize duplication of computation and the amount of data communicated among processors. We investigate two approaches to address this challenge. In the data partitioning approach, the data-set is partitioned into smaller units, which are then processed independently. In the rule partitioning approach the rule-base is partitioned and the smaller rule-bases are applied to the complete data set. We present various algorithms for the partitioning and analyze their advantages and disadvantages. A parallel inferencing algorithm is presented which uses the partitions that are created by the two approaches. We then present an implementation based on a popular open source OWL reasoner and on a networked cluster. Our experimental results show significant speedups for some popular benchmarks, thus making this a promising approach.
OWL知识库的并行推理
研究了OWL知识库推理过程的并行化问题。这个问题中的一个关键挑战是划分该进程的计算工作负载,以最小化重复计算和处理器之间通信的数据量。我们研究了解决这一挑战的两种方法。在数据分区方法中,数据集被划分为更小的单元,然后独立处理。在规则划分方法中,对规则库进行划分,并将较小的规则库应用于完整的数据集。我们提出了各种划分算法,并分析了它们的优缺点。提出了一种并行推理算法,该算法使用了两种方法创建的分区。然后,我们提出了一个基于流行的开源OWL推理器和网络集群的实现。我们的实验结果表明,在一些流行的基准测试中,这种方法有显著的加速,因此这是一种很有前途的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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