The topology of the hyperlink graph among pages expressing different opinions may influence the exposure of readers to diverse content. Structural bias may trap a reader in a polarized bubble with no access to other opinions. We model readers' behavior as random walks. A node is in a polarized bubble if the expected length of a random walk from it to a page of different opinion is large. The structural bias of a graph is the sum of the radii of highly-polarized bubbles. We study the problem of decreasing the structural bias through edge insertions. Healing all nodes with high polarized bubble radius is hard to approximate within a logarithmic factor, so we focus on finding the best k edges to insert to maximally reduce the structural bias. We present RePBubLik, an algorithm that leverages a variant of the random walk closeness centrality to select the edges to insert. RePBubLik obtains, under mild conditions, a constant-factor approximation. It reduces the structural bias faster than existing edge-recommendation methods, including some designed to reduce the polarization of a graph.
RePBubLik: Reducing the Polarized Bubble Radius with Link Insertions
The algorithm RePBubLik reduces structural bias in a hyperlink graph by selecting optimal edge insertions to improve access to diverse opinions.
- Year
- 2021
- Venue
- arXiv 2021
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2101.04751ARXIV-DEFAULT
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