Recommendation


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

Bringing Reasoning to Generative Recommendation Through the Lens of Cascaded Ranking

Add code
Feb 03, 2026
Viaarxiv icon

Controlling Output Rankings in Generative Engines for LLM-based Search

Add code
Feb 03, 2026
Viaarxiv icon

Least but not Last: Fine-tuning Intermediate Principal Components for Better Performance-Forgetting Trade-Offs

Add code
Feb 03, 2026
Viaarxiv icon

Beyond Exposure: Optimizing Ranking Fairness with Non-linear Time-Income Functions

Add code
Feb 03, 2026
Viaarxiv icon

SCASRec: A Self-Correcting and Auto-Stopping Model for Generative Route List Recommendation

Add code
Feb 03, 2026
Viaarxiv icon

GRAB: An LLM-Inspired Sequence-First Click-Through Rate Prediction Modeling Paradigm

Add code
Feb 03, 2026
Viaarxiv icon

Unifying Ranking and Generation in Query Auto-Completion via Retrieval-Augmented Generation and Multi-Objective Alignment

Add code
Feb 03, 2026
Viaarxiv icon

De-conflating Preference and Qualification: Constrained Dual-Perspective Reasoning for Job Recommendation with Large Language Models

Add code
Feb 03, 2026
Viaarxiv icon

ALPBench: A Benchmark for Attribution-level Long-term Personal Behavior Understanding

Add code
Feb 03, 2026
Viaarxiv icon

Multimodal Generative Recommendation for Fusing Semantic and Collaborative Signals

Add code
Feb 03, 2026
Viaarxiv icon