Convergence of Tomlin's HOTS algorithm
Olivier Fercoq

TL;DR
This paper proves the convergence of Tomlin's HOTS algorithm for web page ranking, analyzes its rate, and proposes a normalized version to improve performance on large web graphs.
Contribution
It provides the first convergence proof for HOTS, extends the analysis to deformations, and introduces a normalized version with better convergence properties.
Findings
HOTS converges linearly under mild assumptions
Normalized HOTS improves convergence rate on large graphs
Coordinate descent effectively computes HOTS vectors
Abstract
The HOTS algorithm uses the hyperlink structure of the web to compute a vector of scores with which one can rank web pages. The HOTS vector is the vector of the exponentials of the dual variables of an optimal flow problem (the "temperature" of each page). The flow represents an optimal distribution of web surfers on the web graph in the sense of entropy maximization. In this paper, we prove the convergence of Tomlin's HOTS algorithm. We first study a simplified version of the algorithm, which is a fixed point scaling algorithm designed to solve the matrix balancing problem for nonnegative irreducible matrices. The proof of convergence is general (nonlinear Perron-Frobenius theory) and applies to a family of deformations of HOTS. Then, we address the effective HOTS algorithm, designed by Tomlin for the ranking of web pages. The model is a network entropy maximization problem…
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Taxonomy
TopicsComplex Network Analysis Techniques · Theoretical and Computational Physics · Complex Systems and Time Series Analysis
