Bipartite Graph Convolutional Hashing for Effective and Efficient Top-N Search in Hamming Space

04/01/2023
by   Yankai Chen, et al.
0

Searching on bipartite graphs is basal and versatile to many real-world Web applications, e.g., online recommendation, database retrieval, and query-document searching. Given a query node, the conventional approaches rely on the similarity matching with the vectorized node embeddings in the continuous Euclidean space. To efficiently manage intensive similarity computation, developing hashing techniques for graph structured data has recently become an emerging research direction. Despite the retrieval efficiency in Hamming space, prior work is however confronted with catastrophic performance decay. In this work, we investigate the problem of hashing with Graph Convolutional Network on bipartite graphs for effective Top-N search. We propose an end-to-end Bipartite Graph Convolutional Hashing approach, namely BGCH, which consists of three novel and effective modules: (1) adaptive graph convolutional hashing, (2) latent feature dispersion, and (3) Fourier serialized gradient estimation. Specifically, the former two modules achieve the substantial retention of the structural information against the inevitable information loss in hash encoding; the last module develops Fourier Series decomposition to the hashing function in the frequency domain mainly for more accurate gradient estimation. The extensive experiments on six real-world datasets not only show the performance superiority over the competing hashing-based counterparts, but also demonstrate the effectiveness of all proposed model components contained therein.

READ FULL TEXT

page 6

page 8

research
06/25/2022

Asymmetric Transfer Hashing with Adaptive Bipartite Graph Learning

Thanks to the efficient retrieval speed and low storage consumption, lea...
research
10/07/2022

Set2Box: Similarity Preserving Representation Learning of Sets

Sets have been used for modeling various types of objects (e.g., a docum...
research
04/06/2017

Online Hashing

Although hash function learning algorithms have achieved great success i...
research
06/27/2019

Adversarial Representation Learning on Large-Scale Bipartite Graphs

Graph representation on large-scale bipartite graphs is central for a va...
research
10/19/2017

Improved Search in Hamming Space using Deep Multi-Index Hashing

Similarity-preserving hashing is a widely-used method for nearest neighb...
research
03/04/2020

Learning to Hash with Graph Neural Networks for Recommender Systems

Graph representation learning has attracted much attention in supporting...
research
02/27/2020

Auto-Encoding Twin-Bottleneck Hashing

Conventional unsupervised hashing methods usually take advantage of simi...

Please sign up or login with your details

Forgot password? Click here to reset