Models for Capturing Temporal Smoothness in Evolving Networks for Learning Latent Representation of Nodes

04/16/2018
by   Tanay Kumar Saha, et al.
0

In a dynamic network, the neighborhood of the vertices evolve across different temporal snapshots of the network. Accurate modeling of this temporal evolution can help solve complex tasks involving real-life social and interaction networks. However, existing models for learning latent representation are inadequate for obtaining the representation vectors of the vertices for different time-stamps of a dynamic network in a meaningful way. In this paper, we propose latent representation learning models for dynamic networks which overcome the above limitation by considering two different kinds of temporal smoothness: (i) retrofitted, and (ii) linear transformation. The retrofitted model tracks the representation vector of a vertex over time, facilitating vertex-based temporal analysis of a network. On the other hand, linear transformation based model provides a smooth transition operator which maps the representation vectors of all vertices from one temporal snapshot to the next (unobserved) snapshot-this facilitates prediction of the state of a network in a future time-stamp. We validate the performance of our proposed models by employing them for solving the temporal link prediction task. Experiments on 9 real-life networks from various domains validate that the proposed models are significantly better than the existing models for predicting the dynamics of an evolving network.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/23/2022

Piecewise-Velocity Model for Learning Continuous-time Dynamic Node Representations

Networks have become indispensable and ubiquitous structures in many fie...
research
06/24/2019

Dynamic Network Embeddings for Network Evolution Analysis

Network embeddings learn to represent nodes as low-dimensional vectors t...
research
10/11/2021

Provenance in Temporal Interaction Networks

In temporal interaction networks, vertices correspond to entities, which...
research
08/22/2021

Temporal Network Embedding via Tensor Factorization

Representation learning on static graph-structured data has shown a sign...
research
01/12/2013

A Triclustering Approach for Time Evolving Graphs

This paper introduces a novel technique to track structures in time evol...
research
09/07/2018

dyngraph2vec: Capturing Network Dynamics using Dynamic Graph Representation Learning

Learning graph representations is a fundamental task aimed at capturing ...
research
08/07/2021

DySR: A Dynamic Representation Learning and Aligning based Model for Service Bundle Recommendation

An increasing number and diversity of services are available, which resu...

Please sign up or login with your details

Forgot password? Click here to reset