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Multilevel Aggregation Methods for Small-World Graphs with Application to Random-Walk Ranking

机译:小世界图的多级聚合方法及其在随机游走等级中的应用

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摘要

We describe multilevel aggregation in the specific context of using Markov chains to rank the nodes of graphs. More generally, aggregation is a graph coarsening technique that has a wide range of possible uses regarding information retrieval applications. Aggregation successfully generates efficient multilevel methods for solving nonsingular linear systems and various eigenproblems from discretized partial differential equations, which tend to involve mesh-like graphs. Our primary goal is to extend the applicability of aggregation to similar problems on small-world graphs, with a secondary goal of developing these methods for eventual applicability towards many other tasks such as using the information in the hierarchies for node clustering or pattern recognition. The nature of small-world graphs makes it difficult for many coarsening approaches to obtain useful hierarchies that have complexity on the order of the number of edges in the original graph while retaining the relevant properties of the original graph. Here, for a set of synthetic graphs with the small-world property, we show how multilevel hierarchies formed with non-overlapping strength-based aggregation have optimal or near optimal complexity. We also provide an example of how these hierarchies are employed to accelerate convergence of methods that calculate the stationary probability vector of large, sparse, irreducible, slowly-mixing Markov chains on such small-world graphs. The stationary probability vector of a Markov chain allows one to rank the nodes in a graph based on the likelihood that a long random walk visits each node. These ranking approaches have a wide range of applications including information retrieval and web ranking, performance modeling of computer and communication systems, analysis of social networks, dependability and security analysis, and analysis of biological systems.
机译:我们在使用马尔可夫链对图的节点进行排序的特定上下文中描述多级聚合。更一般而言,聚合是一种图形粗化技术,在信息检索应用程序方面具有广泛的可能用途。聚合成功地产生了有效的多级方法,用于解决离散的偏微分方程的非奇异线性系统和各种本征问题,这些偏微分方程往往涉及网格状图。我们的主要目标是将聚合的适用性扩展到小世界图形上的类似问题,其次要目标是开发这些方法以最终适用于许多其他任务,例如将层次结构中的信息用于节点聚类或模式识别。小世界图的性质使许多粗糙化方法难以获得有用的层次结构,这些层次结构在原始图的边数数量上具有复杂性,同时又保留了原始图的相关属性。在这里,对于一组具有小世界属性的合成图,我们展示了使用基于非强度重叠的聚合形成的多级层次结构如何具有最佳或接近最佳的复杂度。我们还提供了一个示例,说明了如何使用这些层次结构来加速在此类小世界图上计算大型,稀疏,不可归约,缓慢混合的马尔可夫链的平稳概率矢量的方法的收敛。马尔可夫链的平稳概率向量允许人们根据长时间随机游走访问每个节点的可能性在图中对节点进行排名。这些排名方法具有广泛的应用,包括信息检索和Web排名,计算机和通信系统的性能建模,社交网络分析,可靠性和安全性分析以及生物系统分析。

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