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A PageRank Algorithm based on Asynchronous Gauss-Seidel Iterations

机译:基于异步Gauss-Seidel迭代的PageRank算法

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We address the PageRank problem of associating a relative importance value to all web pages in the Internet so that a search engine can use them to sort which pages to show to the user. This precludes finding the eigenvector associated with a particular eigenvalue of the link matrix constructed from the topology graph of the web. In this paper, we investigate the potential benefits of addressing the problem as a solution of a set of linear equations. Initial results suggest that using an asynchronous version of the Gauss-Seidel method can yield a faster convergence than using the traditional power method while maintaining the communications according to the sparse link matrix of the web and avoiding the strict sequential update of the Gauss-Seidel method. Such an alternative poses an interesting path for future research given the benefits of using other more advanced methods to solve systems of linear equations. Additionally, it is investigated the benefits of having a projection after all page ranks have been updated as to maintain all its entries summing to one and positive. In simulations, it is provided evidence to support future research on approximation rules that can be used to avoid the need for the projection to the n-simplex (the projection represents in some cases a threefold increase in the convergence rate over the power method) and on the loss in performance by using an asynchronous algorithm.
机译:我们解决了将相对重要性值与Internet中的所有网页相关联的PageRank问题,以便搜索引擎可以使用它们对要显示给用户的网页进行排序。这排除了找到与从网络的拓扑图构造的链接矩阵的特定特征值相关联的特征向量的可能性。在本文中,我们研究解决此问题作为一组线性方程组的解决方案的潜在好处。初步结果表明,使用高斯-塞德尔方法的异步版本比使用传统的幂方法可以产生更快的收敛,同时根据网络的稀疏链接矩阵保持通信并避免对高斯-塞德尔方法进行严格的顺序更新。考虑到使用其他更高级的方法来求解线性方程组的好处,这种替代方法为将来的研究提供了一条有趣的途径。此外,还研究了在更新所有页面等级之后进行投影的好处,以保持其所有条目的总和为正。在仿真中,提供了证据来支持将来对近似规则的研究,这些规则可用于避免对n单形进行投影的需求(在某些情况下,该投影表示收敛速度是幂方法的三倍)。通过使用异步算法来降低性能。

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