2014
DOI: 10.48550/arxiv.1411.4282
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Learning Supervised PageRank with Gradient-Free Optimization Methods

Lev Bogolubsky,
Pavel Dvurechensky,
Alexander Gasnikov
et al.

Abstract: In this paper, we consider a problem of learning supervised PageRank models, which can account for some properties not considered by classical approaches such as the classical PageRank algorithm. Due to huge hidden dimension of the optimization problem we use random gradient-free methods to solve it. We prove 1 a convergence theorem and estimate the number of arithmetic operations needed to solve it with a given accuracy. We find the best settings of the gradient-free optimization method in terms of the number… Show more

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