Recommendation


Recommendation is the task of providing personalized suggestions to users based on their preferences and behavior.

Learning Peer Influence Probabilities with Linear Contextual Bandits

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Oct 21, 2025
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Inference on Local Variable Importance Measures for Heterogeneous Treatment Effects

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Oct 21, 2025
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Prior-informed optimization of treatment recommendation via bandit algorithms trained on large language model-processed historical records

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Oct 21, 2025
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Synergistic Integration and Discrepancy Resolution of Contextualized Knowledge for Personalized Recommendation

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Oct 16, 2025
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Large Scale Retrieval for the LinkedIn Feed using Causal Language Models

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Oct 16, 2025
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SAIL-Embedding Technical Report: Omni-modal Embedding Foundation Model

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Oct 14, 2025
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Artificial Intelligence Virtual Cells: From Measurements to Decisions across Modality, Scale, Dynamics, and Evaluation

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Oct 14, 2025
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Leveraging Language Semantics for Collaborative Filtering with TextGCN and TextGCN-MLP: Zero-Shot vs In-Domain Performance

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Oct 14, 2025
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Causal Inspired Multi Modal Recommendation

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Oct 14, 2025
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The Role of Parametric Injection-A Systematic Study of Parametric Retrieval-Augmented Generation

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Oct 14, 2025
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