Lightweight Inference-Time Personalization for Frozen Knowledge Graph Embeddings
This addresses the disconnect between general relational reasoning and personalized ranking for users of knowledge graphs, though it is incremental as it builds on existing foundation models.
The paper tackled the problem of adapting frozen knowledge graph embeddings to individual user preferences without retraining, proposing GatedBias, which improved alignment metrics on benchmark datasets while preserving cohort performance.
Foundation models for knowledge graphs (KGs) achieve strong cohort-level performance in link prediction, yet fail to capture individual user preferences; a key disconnect between general relational reasoning and personalized ranking. We propose GatedBias, a lightweight inference-time personalization framework that adapts frozen KG embeddings to individual user contexts without retraining or compromising global accuracy. Our approach introduces structure-gated adaptation: profile-specific features combine with graph-derived binary gates to produce interpretable, per-entity biases, requiring only ${\sim}300$ trainable parameters. We evaluate GatedBias on two benchmark datasets (Amazon-Book and Last-FM), demonstrating statistically significant improvements in alignment metrics while preserving cohort performance. Counterfactual perturbation experiments validate causal responsiveness; entities benefiting from specific preference signals show 6--30$\times$ greater rank improvements when those signals are boosted. These results show that personalized adaptation of foundation models can be both parameter-efficient and causally verifiable, bridging general knowledge representations with individual user needs.