20 results for “Generative recommendation”
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Dongdong Nian, Dongqi Fu, Chenliang Xu, Yinglong Xia +3 more
This paper proposes ChronoID, a framework for time-aware semantic ID learning in generative recommendation.
OneRec Team, Biao Yang, Boyang Ding, Chenglong Chu +80 more
The paper proposes OneReason, a framework that enhances the reasoning capability of generative recommendation models by focusing on improving item perception and structuring user behavior into coheren…
Bangguo Zhu, Peng Huo, Yuanbo Zhao, Zhicheng Du +2 more
The paper proposes TDPM, a time-aware diffusion model for generative recommendation, which significantly improves recommendation accuracy by explicitly modeling the non-stationary, time-evolving natur…
Hui Yang, Daiwei He, Kevin Jiang, Taejin Park +19 more
The paper introduces a novel paradigm where a fine-tuned LLM acts as an ancillary predictor to forecast likely advertisers, significantly improving ad recommendation systems by augmenting candidate ge…
Tao Feng, Tianyang Luo, Jingjun Xu, Zhigang Hua +4 more
ExpWeaver introduces a novel framework for LLM agents to learn from past experiences using latent retrieval-augmented generation, achieving state-of-the-art performance while significantly improving t…
Xiangyu Wang, Yawen He, Shivendra Pratap Singh, Han Huang +11 more
The paper introduces SCALR, a novel framework that generates synthetic user-item interaction data from a source domain to augment a target recommendation domain, significantly improving system perform…
Weizhi Zhang, Wooseong Yang, Yuxin Cui, Zhaohui Guo +8 more
The paper advocates for integrating explicit contextual feedback (like reviews and comments) into LLM-based recommender systems to achieve more personalized, transparent, and semantically aligned reco…
The paper proposes DINOSAUR, a framework that incorporates embedding uncertainty into Approximate Nearest Neighbour search to improve retrieval for niche, long-tail content.
This paper proposes Popularity-Aware Denoising (PAD), a framework to improve denoising recommendation methods by modulating denoising strength based on item popularity.
Yangtian Zhang, Zhe Wang, Arthur Gretton, Rex Ying +3 more
The paper introduces the Insertion Process (IP), a novel stochastic generative model that learns variable-length, non-monotonic sequence generation by explicitly modeling the insertion order of tokens…
This book provides a compact, derivation-oriented mathematical primer that connects major families of generative AI models, showing their underlying structural relationships.
MARS proposes an encoder-agnostic aggregation operator that explicitly models multi-scale temporal structure in sequential recommendation, achieving state-of-the-art performance across both sparse and…
Hongxu Ma, Han Zhou, Chenghou Jin, Jie Zhang +4 more
FlowTime proposes a novel Continuous Generative Regression framework using a Flow-based Personalized Prior to accurately model the multimodal and heterogeneous nature of user watch time prediction, si…
Xu Li, Hanzhe Tu, Xinyi Li, Kuncheng Zhao +2 more
EvoGens is an evolution-inspired framework that treats scientific idea generation as an evolutionary search, significantly boosting the novelty and diversity of generated research ideas compared to ex…
Anh Truong, John Trenkle, Yuanbo Chen, Honghong Zhao +3 more
The paper proposes Shallow-RHS, an asymmetric graph-completion model, to solve the cold-start problem for both new content and new devices in large-scale recommendation systems.
Shali Jiang, Hua Zheng, Boyang Liu, Laming Chen +39 more
LoopFM proposes a novel framework to significantly improve knowledge distillation for recommendation systems by structuring the rich intermediate embeddings of large foundation models as input feature…
The paper proposes Group Rank-Constrained Deep Matrix Completion (Group RC-DMC), a novel framework that jointly leverages low-rank structure and attention-based modeling to provide accurate group reco…
Zheng Yuan, Chuang Zhou, Linhao Luo, Siyu An +3 more
MoG proposes a novel Mixture of Experts framework for graph-based RAG, which uses hub graphs to guide the sparse activation of domain-specific expert graphs, significantly improving retrieval accuracy…
The paper introduces a hybrid WGAN-GA framework that uses a Genetic Algorithm (GA) to refine graphs generated by a GAN, significantly reducing structural deviations and improving realism.
Hongru Hou, Tiehua Mei, Denghui Geng, Jinhui Huang +4 more
The paper proposes ProRL, an effective Reinforcement Learning framework that rectifies gradient estimation deficiencies to optimize proactive recommendation paths, significantly outperforming existing…