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MMKGR: Multi-hop Multi-modal Knowledge Graph Reasoning

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arxiv 2209.01416 v1 pith:LTY25A5G submitted 2022-09-03 cs.AI cs.DB

MMKGR: Multi-hop Multi-modal Knowledge Graph Reasoning

classification cs.AI cs.DB
keywords reasoningmulti-modalknowledgefeaturesmulti-hopmissingmmkgrauxiliary
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multi-modal knowledge graphs (MKGs) include not only the relation triplets, but also related multi-modal auxiliary data (i.e., texts and images), which enhance the diversity of knowledge. However, the natural incompleteness has significantly hindered the applications of MKGs. To tackle the problem, existing studies employ the embedding-based reasoning models to infer the missing knowledge after fusing the multi-modal features. However, the reasoning performance of these methods is limited due to the following problems: (1) ineffective fusion of multi-modal auxiliary features; (2) lack of complex reasoning ability as well as inability to conduct the multi-hop reasoning which is able to infer more missing knowledge. To overcome these problems, we propose a novel model entitled MMKGR (Multi-hop Multi-modal Knowledge Graph Reasoning). Specifically, the model contains the following two components: (1) a unified gate-attention network which is designed to generate effective multi-modal complementary features through sufficient attention interaction and noise reduction; (2) a complementary feature-aware reinforcement learning method which is proposed to predict missing elements by performing the multi-hop reasoning process, based on the features obtained in component (1). The experimental results demonstrate that MMKGR outperforms the state-of-the-art approaches in the MKG reasoning task.

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