A jointly learned hierarchical index with cross-attention and residual quantization scales exact retrieval in foundational recommendation models, deployed at Meta with additional performance from test-time training on index nodes.
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The Isotonic Layer unifies calibration and debiasing in recommendation models as a single end-to-end trainable component using learnable context embeddings for piecewise linear adjustments.
citing papers explorer
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Efficient Retrieval Scaling with Hierarchical Indexing for Large Scale Recommendation
A jointly learned hierarchical index with cross-attention and residual quantization scales exact retrieval in foundational recommendation models, deployed at Meta with additional performance from test-time training on index nodes.
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Isotonic Layer: A Unified Framework for Recommendation Calibration and Debiasing
The Isotonic Layer unifies calibration and debiasing in recommendation models as a single end-to-end trainable component using learnable context embeddings for piecewise linear adjustments.