TL;DR
CSNE introduces a probabilistic embedding method for signed networks that leverages structural priors based on the MaxEnt principle, improving sign prediction accuracy and offering a resource-efficient alternative.
Contribution
The paper presents CSNE, a novel probabilistic embedding approach that separates structural priors from fine-grained details, and introduces MaxEnt-based priors for modeling signed networks.
Findings
CSNE outperforms state-of-the-art sign prediction methods.
MaxEnt priors achieve competitive accuracy with lower computational cost.
Structural priors significantly enhance embedding performance.
Abstract
Signed networks are mathematical structures that encode positive and negative relations between entities such as friend/foe or trust/distrust. Recently, several papers studied the construction of useful low-dimensional representations (embeddings) of these networks for the prediction of missing relations or signs. Existing embedding methods for sign prediction generally enforce different notions of status or balance theories in their optimization function. These theories, however, are often inaccurate or incomplete, which negatively impacts method performance. In this context, we introduce conditional signed network embedding (CSNE). Our probabilistic approach models structural information about the signs in the network separately from fine-grained detail. Structural information is represented in the form of a prior, while the embedding itself is used for capturing fine-grained…
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