Paper List of Pre-trained Foundation Recommender Models
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Updated
Aug 12, 2024
Paper List of Pre-trained Foundation Recommender Models
This is the official implementation of our paper Personalized Transfer of User Preferences for Cross-domain Recommendation (PTUPCDR), which has been accepted by WSDM2022.
Multimodal Dataset and Benchmark for Multi-domain and Cross-domain Recommendation System
🔥🔥🔥 Latest Advances on Large Recommendation Models
Item Silk Road: Recommending Items from Information Domains to Social Users, SIGIR2017
[ICDE 2022]Cross-Domain Recommendation to Cold-Start Users via Variational Information Bottleneck
Multi-domain Recommendation with Adapter Tuning
The source code and dataset for the RecGURU paper (WSDM 2022)
papers of universal user representation learning for recommendation
Pre-training and Transfer learning papers for recommendation
A repository listing important datasets for multimodal recommender systems
Review-Aware Cross Domain Product Recommendation
AMT-CDR: A Deep Adversarial Multi-channel Transfer Network for Cross-domain Recommendation
Is ID embedding necessary for multimodal recommender system?
Context-Aware Residual Transformer (CART) is a kiosk recommendation system (CART) that utilizes self-supervised learning techniques tailored to kiosks in an offline retail environment and developed by a collaboration between NS Lab @ CUK and IIP Lab @ Gachon University based on pure PyTorch backend.
Enhanced recommendations through sentiment analysis on reviews and prioritized popular attractions based on keyword frequency, ensuring more personalized and relevant suggestions
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