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Adaptive Low Resolution Pruning for fast Full Search-equivalent pattern matching

机译:自适应低分辨率修剪,可实现快速的全搜索等效模式匹配

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Several recent proposals have shown the feasibility of significantly speeding-up pattern matching by means of Full Search-equivalent techniques, i.e. without approximating the outcome of the search with respect to a brute force investigation. These techniques are generally heavily based on efficient incremental calculation schemes aimed at avoiding unnecessary computations. In a very recent and extensive experimental evaluation, Low Resolution Pruning turned out to be in most cases the best performing approach. In this paper we propose a computational analysis of several incremental techniques specifically designed to enhance the efficiency of LRP. In addition, we propose a novel LRP algorithm aimed at minimizing the theoretical number of operations by adaptively exploiting different incremental approaches. We demonstrate the effectiveness of our proposal by means of experimental evaluation on a large dataset.
机译:最近的一些提议已经表明了通过完全搜索等效技术来显着加速模式匹配的可行性,即,在蛮力调查中不近似搜索结果。这些技术通常主要基于旨在避免不必要的计算的有效增量计算方案。在最近的一次广泛的实验评估中,低分辨率修剪被证明是大多数情况下性能最好的方法。在本文中,我们提出了几种专门设计用于增强LRP效率的增量技术的计算分析。此外,我们提出了一种新颖的LRP算法,旨在通过自适应地利用不同的增量方法来最小化理论操作数。我们通过对大型数据集进行实验评估来证明我们的建议的有效性。

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