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Main Authors: Zhang, Yichi, Chen, Zhuo, Guo, Lingbing, Xu, Yajing, Hu, Binbin, Liu, Ziqi, Zhang, Wen, Chen, Huajun
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.09468
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author Zhang, Yichi
Chen, Zhuo
Guo, Lingbing
Xu, Yajing
Hu, Binbin
Liu, Ziqi
Zhang, Wen
Chen, Huajun
author_facet Zhang, Yichi
Chen, Zhuo
Guo, Lingbing
Xu, Yajing
Hu, Binbin
Liu, Ziqi
Zhang, Wen
Chen, Huajun
contents Multi-modal knowledge graph completion (MMKGC) aims to discover unobserved knowledge from given knowledge graphs, collaboratively leveraging structural information from the triples and multi-modal information of the entities to overcome the inherent incompleteness. Existing MMKGC methods usually extract multi-modal features with pre-trained models, resulting in coarse handling of multi-modal entity information, overlooking the nuanced, fine-grained semantic details and their complex interactions. To tackle this shortfall, we introduce a novel framework MyGO to tokenize, fuse, and augment the fine-grained multi-modal representations of entities and enhance the MMKGC performance. Motivated by the tokenization technology, MyGO tokenizes multi-modal entity information as fine-grained discrete tokens and learns entity representations with a cross-modal entity encoder. To further augment the multi-modal representations, MyGO incorporates fine-grained contrastive learning to highlight the specificity of the entity representations. Experiments on standard MMKGC benchmarks reveal that our method surpasses 19 of the latest models, underlining its superior performance. Code and data can be found in https://github.com/zjukg/MyGO
format Preprint
id arxiv_https___arxiv_org_abs_2404_09468
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Tokenization, Fusion, and Augmentation: Towards Fine-grained Multi-modal Entity Representation
Zhang, Yichi
Chen, Zhuo
Guo, Lingbing
Xu, Yajing
Hu, Binbin
Liu, Ziqi
Zhang, Wen
Chen, Huajun
Artificial Intelligence
Multi-modal knowledge graph completion (MMKGC) aims to discover unobserved knowledge from given knowledge graphs, collaboratively leveraging structural information from the triples and multi-modal information of the entities to overcome the inherent incompleteness. Existing MMKGC methods usually extract multi-modal features with pre-trained models, resulting in coarse handling of multi-modal entity information, overlooking the nuanced, fine-grained semantic details and their complex interactions. To tackle this shortfall, we introduce a novel framework MyGO to tokenize, fuse, and augment the fine-grained multi-modal representations of entities and enhance the MMKGC performance. Motivated by the tokenization technology, MyGO tokenizes multi-modal entity information as fine-grained discrete tokens and learns entity representations with a cross-modal entity encoder. To further augment the multi-modal representations, MyGO incorporates fine-grained contrastive learning to highlight the specificity of the entity representations. Experiments on standard MMKGC benchmarks reveal that our method surpasses 19 of the latest models, underlining its superior performance. Code and data can be found in https://github.com/zjukg/MyGO
title Tokenization, Fusion, and Augmentation: Towards Fine-grained Multi-modal Entity Representation
topic Artificial Intelligence
url https://arxiv.org/abs/2404.09468