Relation-enhanced Negative Sampling for Multimodal Knowledge Graph Completion

Derong Xu, Tong Xu, Shiwei Wu, Jingbo Zhou, Enhong Chen
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引用次数: 8

Abstract

Knowledge Graph Completion (KGC), aiming to infer the missing part of Knowledge Graphs (KGs), has long been treated as a crucial task to support downstream applications of KGs, especially for the multimodal KGs (MKGs) which suffer the incomplete relations due to the insufficient accumulation of multimodal corpus. Though a few research attentions have been paid to the completion task of MKGs, there is still a lack of specially designed negative sampling strategies tailored to MKGs. Meanwhile, though effective negative sampling strategies have been widely regarded as a crucial solution for KGC to alleviate the vanishing gradient problem, we realize that, there is a unique challenge for negative sampling in MKGs about how to model the effect of KG relations during learning the complementary semantics among multiple modalities as an extra context. In this case, traditional negative sampling techniques which only consider the structural knowledge may fail to deal with the multimodal KGC task. To that end, in this paper, we propose a MultiModal Relation-enhanced Negative Sampling (MMRNS) framework for multimodal KGC task. Especially, we design a novel knowledge-guided cross-modal attention (KCA) mechanism, which provides bi-directional attention for visual & textual features via integrating relation embedding. Then, an effective contrastive semantic sampler is devised after consolidating the KCA mechanism with contrastive learning. In this way, a more similar representation of semantic features between positive samples, as well as a more diverse representation between negative samples under different relations could be learned. Afterwards, a masked gumbel-softmax optimization mechanism is utilized for solving the non-differentiability of sampling process, which provides effective parameter optimization compared with traditional sample strategies. Extensive experiments on three multimodal KGs demonstrate that our MMRNS framework could significantly outperform the state-of-the-art baseline methods, which validates the effectiveness of relation guides in multimodal KGC task.
多模态知识图补全的关系增强负抽样
知识图谱补全(Knowledge Graph补全,KGC)一直被视为支持知识图谱下游应用的一项重要任务,特别是对于由于多模态语料库积累不足而导致关系不完全的多模态知识图谱。虽然对MKGs的完成任务进行了一些研究,但仍然缺乏专门为MKGs设计的负采样策略。同时,尽管有效的负采样策略被广泛认为是缓解梯度消失问题的关键解决方案,但我们意识到,MKGs中的负采样存在一个独特的挑战,即如何在多模态之间的互补语义学习过程中建模KG关系的影响。在这种情况下,传统的只考虑结构知识的负抽样技术可能无法处理多模态KGC任务。为此,在本文中,我们提出了一个多模态关系增强负采样(MMRNS)框架,用于多模态KGC任务。特别地,我们设计了一种新的知识引导的跨模态注意机制,通过集成关系嵌入为视觉和文本特征提供双向注意。然后,将KCA机制与对比学习相结合,设计出有效的对比语义采样器。这样可以学习到正样本之间语义特征的更相似的表示,以及不同关系下负样本之间语义特征的更多样化的表示。然后,利用屏蔽gumbel-softmax优化机制解决采样过程的不可微性问题,与传统的采样策略相比,提供了有效的参数优化。在三个多模态KGC上的大量实验表明,我们的MMRNS框架可以显著优于最先进的基线方法,这验证了关系指南在多模态KGC任务中的有效性。
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