Combating Confirmation Bias: A Unified Pseudo-Labeling Framework for Entity Alignment
Qijie Ding, Jie Yin, Daokun Zhang, Junbin Gao

TL;DR
This paper introduces UPL-EA, a novel framework that systematically reduces confirmation bias in pseudo-labeling for entity alignment across knowledge graphs, improving accuracy and robustness.
Contribution
The paper proposes a unified pseudo-labeling framework with OT-based matching and ensemble refinement to eliminate errors and enhance entity alignment performance.
Findings
Outperforms 15 baseline methods in experiments.
Effectively reduces pseudo-labeling errors.
Theoretically and empirically validated improvements.
Abstract
Entity alignment (EA) aims at identifying equivalent entity pairs across different knowledge graphs (KGs) that refer to the same real-world identity. To circumvent the shortage of seed alignments provided for training, recent EA models utilize pseudo-labeling strategies to iteratively add unaligned entity pairs predicted with high confidence to the seed alignments for model training. However, the adverse impact of confirmation bias during pseudo-labeling has been largely overlooked, thus hindering entity alignment performance. To systematically combat confirmation bias for pseudo-labeling-based entity alignment, we propose a Unified Pseudo-Labeling framework for Entity Alignment (UPL-EA) that explicitly eliminates pseudo-labeling errors to boost the accuracy of entity alignment. UPL-EA consists of two complementary components: (1) Optimal Transport (OT)-based pseudo-labeling uses…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Data Quality and Management · Topic Modeling
