CSNE: Conditional Signed Network Embedding

05/19/2020
by   Alexandru Mara, et al.
7

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 information. These components are then integrated in a rigorous manner. CSNE's accuracy depends on the existence of sufficiently powerful structural priors for modelling signed networks, currently unavailable in the literature. Thus, as a second main contribution, which we find to be highly valuable in its own right, we also introduce a novel approach to construct priors based on the Maximum Entropy (MaxEnt) principle. These priors can model the polarity of nodes (degree to which their links are positive) as well as signed triangle counts (a measure of the degree structural balance holds to in a network). Experiments on a variety of real-world networks confirm that CSNE outperforms the state-of-the-art on the task of sign prediction. Moreover, the MaxEnt priors on their own, while less accurate than full CSNE, achieve accuracies competitive with the state-of-the-art at very limited computational cost, thus providing an excellent runtime-accuracy trade-off in resource-constrained situations.

READ FULL TEXT
research
04/29/2021

MUSE: Multi-faceted Attention for Signed Network Embedding

Signed network embedding is an approach to learn low-dimensional represe...
research
01/07/2019

Deep Network Embedding for Graph Representation Learning in Signed Networks

Network embedding has attracted an increasing attention over the past fe...
research
06/26/2019

Signed Graph Attention Networks

Graph or network data is ubiquitous in the real world, including social ...
research
08/03/2021

Effective Model Integration Algorithm for Improving Link and Sign Prediction in Complex Networks

Link and sign prediction in complex networks bring great help to decisio...
research
05/24/2022

Exponential Random Graph Models for Dynamic Signed Networks: An Application to International Relations

Substantive research in the Social Sciences regularly investigates signe...
research
09/30/2019

Improving Textual Network Learning with Variational Homophilic Embeddings

The performance of many network learning applications crucially hinges o...
research
06/16/2021

FORMS: Fine-grained Polarized ReRAM-based In-situ Computation for Mixed-signal DNN Accelerator

Recent works demonstrated the promise of using resistive random access m...

Please sign up or login with your details

Forgot password? Click here to reset