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Multiple Heads are Better than One: Mixture of Modality Knowledge Experts for Entity Representation Learning

Authors :
Zhang, Yichi
Chen, Zhuo
Guo, Lingbing
Xu, Yajing
Hu, Binbin
Liu, Ziqi
Zhang, Wen
Chen, Huajun
Publication Year :
2024

Abstract

Learning high-quality multi-modal entity representations is an important goal of multi-modal knowledge graph (MMKG) representation learning, which can enhance reasoning tasks within the MMKGs, such as MMKG completion (MMKGC). The main challenge is to collaboratively model the structural information concealed in massive triples and the multi-modal features of the entities. Existing methods focus on crafting elegant entity-wise multi-modal fusion strategies, yet they overlook the utilization of multi-perspective features concealed within the modalities under diverse relational contexts. To address this issue, we introduce a novel framework with Mixture of Modality Knowledge experts (MoMoK for short) to learn adaptive multi-modal entity representations for better MMKGC. We design relation-guided modality knowledge experts to acquire relation-aware modality embeddings and integrate the predictions from multi-modalities to achieve joint decisions. Additionally, we disentangle the experts by minimizing their mutual information. Experiments on four public MMKG benchmarks demonstrate the outstanding performance of MoMoK under complex scenarios.<br />Comment: Work in progress. Code and data will be released at https://github.com/zjukg/MoMoK

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.16869
Document Type :
Working Paper