Local Ranking Problem on the BrowseGraph
Michele Trevisiol, Luca Maria Aiello, Paolo Boldi, Roi Blanco

TL;DR
This paper investigates the Local Ranking Problem on BrowseGraphs, demonstrating that local graph structure can reliably predict ranking divergence from global importance, aiding online service providers.
Contribution
It introduces the first analysis of LRP on BrowseGraphs, showing local structure can estimate ranking divergence with high accuracy.
Findings
Rank correlation of up to 0.8 between local and global rankings.
Structural features of local BrowseGraphs can predict ranking divergence.
Study conducted on a large news provider's browsing data.
Abstract
The "Local Ranking Problem" (LRP) is related to the computation of a centrality-like rank on a local graph, where the scores of the nodes could significantly differ from the ones computed on the global graph. Previous work has studied LRP on the hyperlink graph but never on the BrowseGraph, namely a graph where nodes are webpages and edges are browsing transitions. Recently, this graph has received more and more attention in many different tasks such as ranking, prediction and recommendation. However, a web-server has only the browsing traffic performed on its pages (local BrowseGraph) and, as a consequence, the local computation can lead to estimation errors, which hinders the increasing number of applications in the state of the art. Also, although the divergence between the local and global ranks has been measured, the possibility of estimating such divergence using only local…
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