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2023
DOI: 10.3390/app13116747
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Multi-Modal Entity Alignment Method Based on Feature Enhancement

Abstract: Multi-modal entity alignment refers to identifying equivalent entities between two different multi-modal knowledge graphs that consist of multi-modal information such as structural triples and descriptive images. Most previous multi-modal entity alignment methods have mainly used corresponding encoders of each modality to encode entity information and then perform feature fusion to obtain the multi-modal joint representation. However, this approach does not fully utilize the multi-modal information of aligned … Show more

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“…With the development of cross-disciplinary research between knowledge engineering and multimodal learning, multimodal knowledge graphs (KG) [1] have become increasingly crucial as a means to assist computers in understanding the entity background knowledge in many artificial intelligence applications, such as question answering systems [2], recommendation systems [3], natural language understanding [4], and scene graph generation [5]. In recent years, many researchers have constructed numerous multimodal knowledge graphs targeting different domains and languages.…”
Section: Introductionmentioning
confidence: 99%
“…With the development of cross-disciplinary research between knowledge engineering and multimodal learning, multimodal knowledge graphs (KG) [1] have become increasingly crucial as a means to assist computers in understanding the entity background knowledge in many artificial intelligence applications, such as question answering systems [2], recommendation systems [3], natural language understanding [4], and scene graph generation [5]. In recent years, many researchers have constructed numerous multimodal knowledge graphs targeting different domains and languages.…”
Section: Introductionmentioning
confidence: 99%