首页> 外文会议>International Workshop on Algorithms and Models for the Web-Graph(WAW 2007); 200711211-12; San Diego,CA(US) >Using Polynomial Chaos to Compute the Influence of Multiple Random Surfers in the PageRank Model
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Using Polynomial Chaos to Compute the Influence of Multiple Random Surfers in the PageRank Model

机译:使用多项式混沌来计算PageRank模型中多个随机冲浪者的影响

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摘要

The PageRank equation computes the importance of pages in a web graph relative to a single random surfer with a constant tele-portation coefficient. To be globally relevant, the teleportation coefficient should account for the influence of all users. Therefore, we correct the PageRank formulation by modeling the teleportation coefficient as a random variable distributed according to user behavior. With this correction, the PageRank values themselves become random. We present two methods to quantify the uncertainty in the random PageRank: a Monte Carlo sampling algorithm and an algorithm based the truncated polynomial chaos expansion of the random quantities. With each of these methods, we compute the expectation and standard deviation of the PageRanks. Our statistical analysis shows that the standard deviation of the PageRanks are uncorrelated with the PageRank vector.
机译:PageRank方程计算相对于具有恒定隐形传送系数的单个随机冲浪者的网络图中页面的重要性。为了具有全局意义,隐形传态系数应考虑所有用户的影响。因此,我们通过将隐形传态系数建模为根据用户行为分配的随机变量来校正PageRank公式。通过此校正,PageRank值本身变为随机的。我们提出了两种方法来量化随机PageRank中的不确定性:蒙特卡洛采样算法和基于随机量的截断多项式混沌展开的算法。使用这些方法中的每一种,我们都可以计算PageRanks的期望值和标准差。我们的统计分析表明,PageRank的标准偏差与PageRank向量不相关。

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