Semi-supervised Network Embedding with Differentiable Deep Quantisation

08/20/2021
by   Tao He, et al.
3

Learning accurate low-dimensional embeddings for a network is a crucial task as it facilitates many downstream network analytics tasks. For large networks, the trained embeddings often require a significant amount of space to store, making storage and processing a challenge. Building on our previous work on semi-supervised network embedding, we develop d-SNEQ, a differentiable DNN-based quantisation method for network embedding. d-SNEQ incorporates a rank loss to equip the learned quantisation codes with rich high-order information and is able to substantially compress the size of trained embeddings, thus reducing storage footprint and accelerating retrieval speed. We also propose a new evaluation metric, path prediction, to fairly and more directly evaluate model performance on the preservation of high-order information. Our evaluation on four real-world networks of diverse characteristics shows that d-SNEQ outperforms a number of state-of-the-art embedding methods in link prediction, path prediction, node classification, and node recommendation while being far more space- and time-efficient.

READ FULL TEXT

page 1

page 4

research
10/14/2016

Semi-supervised Graph Embedding Approach to Dynamic Link Prediction

We propose a simple discrete time semi-supervised graph embedding approa...
research
02/14/2021

Adversarial Attack on Network Embeddings via Supervised Network Poisoning

Learning low-level node embeddings using techniques from network represe...
research
03/04/2020

EPINE: Enhanced Proximity Information Network Embedding

Unsupervised homogeneous network embedding (NE) represents every vertex ...
research
01/20/2021

NEMR: Network Embedding on Metric of Relation

Network embedding maps the nodes of a given network into a low-dimension...
research
01/08/2022

DeHIN: A Decentralized Framework for Embedding Large-scale Heterogeneous Information Networks

Modeling heterogeneity by extraction and exploitation of high-order info...
research
08/20/2021

Unsupervised Domain-adaptive Hash for Networks

Abundant real-world data can be naturally represented by large-scale net...
research
05/07/2018

Billion-scale Network Embedding with Iterative Random Projection

Network embedding has attracted considerable research attention recently...

Please sign up or login with your details

Forgot password? Click here to reset