AIOct 18, 2025

Uncertain Knowledge Graph Completion via Semi-Supervised Confidence Distribution Learning

arXiv:2510.16601v2h-index: 11
AI Analysis

This work improves uncertain knowledge graph completion for applications requiring precise knowledge representations, but it is incremental as it builds on existing embedding methods.

The paper tackles the problem of uncertain knowledge graph completion by addressing imbalanced confidence distributions, proposing a semi-supervised confidence distribution learning method that outperforms state-of-the-art baselines on two datasets.

Uncertain knowledge graphs (UKGs) associate each triple with a confidence score to provide more precise knowledge representations. Recently, since real-world UKGs suffer from the incompleteness, uncertain knowledge graph (UKG) completion attracts more attention, aiming to complete missing triples and confidences. Current studies attempt to learn UKG embeddings to solve this problem, but they neglect the extremely imbalanced distributions of triple confidences. This causes that the learnt embeddings are insufficient to high-quality UKG completion. Thus, in this paper, to address the above issue, we propose a new semi-supervised Confidence Distribution Learning (ssCDL) method for UKG completion, where each triple confidence is transformed into a confidence distribution to introduce more supervision information of different confidences to reinforce the embedding learning process. ssCDL iteratively learns UKG embedding by relational learning on labeled data (i.e., existing triples with confidences) and unlabeled data with pseudo labels (i.e., unseen triples with the generated confidences), which are predicted by meta-learning to augment the training data and rebalance the distribution of triple confidences. Experiments on two UKG datasets demonstrate that ssCDL consistently outperforms state-of-the-art baselines in different evaluation metrics.

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