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Sequential Recommendation

Sequential recommendation is a sophisticated approach to providing personalized suggestions by analyzing users' historical interactions in a sequential manner. Unlike traditional recommendation systems, which consider items in isolation, sequential recommendation takes into account the temporal order of user actions. This method is particularly valuable in domains where the sequence of events matters, such as streaming services, e-commerce platforms, and social media.

Papers

Showing 311320 of 554 papers

TitleStatusHype
Farzi Data: Autoregressive Data Distillation0
SC-Rec: Enhancing Generative Retrieval with Self-Consistent Reranking for Sequential Recommendation0
Federated Mixture-of-Expert for Non-Overlapped Cross-Domain Sequential Recommendation0
FELLAS: Enhancing Federated Sequential Recommendation with LLM as External Services0
Few-shot Model Extraction Attacks against Sequential Recommender Systems0
Towards Differential Privacy in Sequential Recommendation: A Noisy Graph Neural Network Approach0
Filtering with Time-frequency Analysis: An Adaptive and Lightweight Model for Sequential Recommender Systems Based on Discrete Wavelet Transform0
Self-supervised Learning for Sequential Recommendation with Model Augmentation0
Fisher-Weighted Merge of Contrastive Learning Models in Sequential Recommendation0
Towards Efficient and Effective Adaptation of Large Language Models for Sequential Recommendation0
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