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Image-embodied Knowledge Representation Learning

About

Entity images could provide significant visual information for knowledge representation learning. Most conventional methods learn knowledge representations merely from structured triples, ignoring rich visual information extracted from entity images. In this paper, we propose a novel Image-embodied Knowledge Representation Learning model (IKRL), where knowledge representations are learned with both triple facts and images. More specifically, we first construct representations for all images of an entity with a neural image encoder. These image representations are then integrated into an aggregated image-based representation via an attention-based method. We evaluate our IKRL models on knowledge graph completion and triple classification. Experimental results demonstrate that our models outperform all baselines on both tasks, which indicates the significance of visual information for knowledge representations and the capability of our models in learning knowledge representations with images.

Ruobing Xie, Zhiyuan Liu, Huanbo Luan, Maosong Sun• 2016

Related benchmarks

TaskDatasetResultRank
Knowledge Graph CompletionMKG-W
MRR0.3236
22
Knowledge Graph CompletionMKG-Y
MRR33.22
22
Knowledge Graph CompletionDB15K
MRR26.82
22
Knowledge Graph CompletionOverall DB15K, MKG-W, MKG-Y
MRR30.8
22
Multimodal Knowledge Graph CompletionMARS (test)
Hits@10.266
16
Multimodal Analogy ReasoningMARS (test)
Hits@126.6
10
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