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On Caching for Local Graph Clustering Algorithms

机译:关于局部图聚类算法的缓存

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In recent years, local graph clustering techniques have been utilized as devices to unveil the structured hidden of large networks. With the ever growing size of the data sets generated in domains of applications as diverse as biomedicine and natural language processing, time-efficiency has become a problem of growing importance. We address the improvement of the runtime of local graph clustering algorithms by presenting the novel caching approach SGD~*. This strategy combines the Segmented Least Recently Used and Greedy Dual strategies. By applying different caching strategies to the unprotected and protected segments of a cache, SGD~* displays a superior hitrate and can therewith significantly reduce the runtime of clustering algorithms. We evaluate our approach on four real protein-protein-interaction graphs. Our evaluation shows that SGD~* achieves a considerably higher hitrate than state-of-the-art approaches. In addition, we show how by combining caching strategies with a simple data reordering approach, we can significantly improves the hitrate of state-of-the-art caching strategies.
机译:近年来,本地图聚类技术已被用作揭示大型网络的结构化隐藏的设备。随着在诸如生物医学和自然语言处理之类的各种应用领域中生成的数据集的规模不断增长,时间效率已成为日益重要的问题。通过提出新颖的缓存方法SGD〜*,我们解决了局部图聚类算法运行时间的改进问题。此策略结合了分段的最近最少使用策略和贪婪对偶策略。通过对高速缓存的未保护段和受保护段应用不同的缓存策略,SGD〜*显示出较高的命中率,从而可以大大减少群集算法的运行时间。我们在四个真实的蛋白质-蛋白质相互作用图上评估了我们的方法。我们的评估表明,SGD〜*的命中率比最新方法高得多。此外,我们展示了如何通过将缓存策略与简单的数据重新排序方法相结合,来显着提高最新缓存策略的命中率。

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