TL;DR
This paper introduces a non-sampling framework for knowledge graph embedding that considers all negative instances, improving both efficiency and accuracy over traditional negative sampling methods.
Contribution
The paper proposes a novel non-sampling approach for KG embedding that reduces complexity and enhances performance by avoiding negative sampling.
Findings
Achieves better efficiency than sampling-based models.
Improves embedding accuracy on benchmark datasets.
Applicable to a wide range of KG embedding models.
Abstract
Knowledge Graph (KG) is a flexible structure that is able to describe the complex relationship between data entities. Currently, most KG embedding models are trained based on negative sampling, i.e., the model aims to maximize some similarity of the connected entities in the KG, while minimizing the similarity of the sampled disconnected entities. Negative sampling helps to reduce the time complexity of model learning by only considering a subset of negative instances, which may fail to deliver stable model performance due to the uncertainty in the sampling procedure. To avoid such deficiency, we propose a new framework for KG embedding -- Efficient Non-Sampling Knowledge Graph Embedding (NS-KGE). The basic idea is to consider all of the negative instances in the KG for model learning, and thus to avoid negative sampling. The framework can be applied to square-loss based knowledge graph…
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