Cold-Start-RecSys
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Papers, codes , and framewroks that used in Recommender System to solve code-start challenge problem.
Papers, Codes, and Frameworks are used to solve cold-start problem in Recommendation System
This repository contains a list of papers, codes, and Frameworks are used to solve cold-start problem in Recommendation System. If you found any error, please don't hesitate to open an issue or pull request.
Paper & codes
- Recommendation for New Users and New Items via Randomized Training and Mixture-of-Experts Transformation
SIGIR 2020[pdf] [code] - Meta-learning on Heterogeneous Information Networks for Cold-start Recommendation
KDD 2020[pdf] [code] - MAMO: Memory-Augmented Meta-Optimization for Cold-start Recommendation
KDD 2020[pdf] [code] - How to Learn Item Representation for Cold-Start Multimedia Recommendation?
MM'2020[pdf] [code] - Attribute Graph Neural Networks for Strict Cold Start Recommendation
TKDE 2020[pdf] [code] - Task-adaptive Neural Process for User Cold-Start Recommendation
WWW 2021[pdf] [code] - Content-aware Neural Hashing for Cold-start Recommendation
SIGIR20[pdf] [code] - Learning Attribute-to-Feature Mappings for Cold-Start Recommendations
ICDM 2010[pdf] [code] - HERS: Modeling Influential Contexts with Heterogeneous Relations for Sparse and Cold-start Recommendation
AAAI19[pdf] [code] - CATN: Cross-Domain Recommendation for Cold-Start Users via Aspect Transfer Network
SIGIR2020[pdf] [code1] [code2] - Improved Cold-Start Recommendation via Two-Level Bandit Algorithms
BRACIS 2017[pdf] [code] - DropoutNet: Addressing Cold Start in Recommender Systems
NeurIPS'17[pdf] [code] - Alleviating Cold-Start Problems in Recommendation through Pseudo-Labelling over Knowledge Graph
WSDM2021[pdf] [code] - Music cold-start and long-tail recommendation: bias in deep representations
Recsys19[pdf] [code] - x
x[pdf] [code] - x
x[pdf] [code] - x
x[pdf] [code]
upcoming
- Sequential Recommendation for Cold-start Users with Meta Transitional Learning
SIGIR2021[pdf] [code] - Learning to Warm Up Cold Item Embeddings for Cold-start Recommendation with Meta Scaling and Shifting Networks
SIGIR2021[pdf] [code] - Transfer-Meta Framework for Cross-domain Recommendation to Cold-Start Users
SIGIR2021[pdf] [code] - Learning Graph Meta Embeddings for Cold-Start Ads in Click-Through Rate Prediction
SIGIR2021[pdf] [code] - FORM: Follow the Online Regularized Meta-Leader for Cold-Start Recommendation
SIGIR2021[pdf] [code] - Privileged Graph Distillation for Cold-start Recommendation
SIGIR2021[pdf] [code] - Cluster-Based Bandits: Fast Cold-Start for Recommender System New Users
SIGIR2021[pdf] [code] - Decoupling Representation and Regressor for Long-Tailed Information Cascade Prediction
SIGIR2021[pdf] [code]
Contributor
Contributed by Juyong Jiang and Peilin Zhou.