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Integrating Semantics and Neighborhood Information with Graph-Driven Generative Models for Document Retrieval

Authors :
Ou, Zijing
Su, Qinliang
Yu, Jianxing
Liu, Bang
Wang, Jingwen
Zhao, Ruihui
Chen, Changyou
Zheng, Yefeng
Ou, Zijing
Su, Qinliang
Yu, Jianxing
Liu, Bang
Wang, Jingwen
Zhao, Ruihui
Chen, Changyou
Zheng, Yefeng
Publication Year :
2021

Abstract

With the need of fast retrieval speed and small memory footprint, document hashing has been playing a crucial role in large-scale information retrieval. To generate high-quality hashing code, both semantics and neighborhood information are crucial. However, most existing methods leverage only one of them or simply combine them via some intuitive criteria, lacking a theoretical principle to guide the integration process. In this paper, we encode the neighborhood information with a graph-induced Gaussian distribution, and propose to integrate the two types of information with a graph-driven generative model. To deal with the complicated correlations among documents, we further propose a tree-structured approximation method for learning. Under the approximation, we prove that the training objective can be decomposed into terms involving only singleton or pairwise documents, enabling the model to be trained as efficiently as uncorrelated ones. Extensive experimental results on three benchmark datasets show that our method achieves superior performance over state-of-the-art methods, demonstrating the effectiveness of the proposed model for simultaneously preserving semantic and neighborhood information.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1269552908
Document Type :
Electronic Resource