Reco-papers is a curated repository that collects influential research papers, technical resources, and industry materials related to recommender systems and recommendation algorithms. The project organizes a large body of literature into thematic sections such as classic recommender systems, exploration-exploitation strategies, deep learning–based recommendation models, and cold-start mitigation techniques. It serves as a reference library for researchers and engineers who want to explore foundational and cutting-edge work in recommendation technologies. The repository includes papers from academic institutions and industry organizations and groups them according to topics such as retrieval and reranking, reinforcement learning in recommendation, and feature engineering infrastructure. By structuring these materials into categories, the project helps practitioners quickly discover relevant research for designing recommendation engines in production environments.
Features
- Curated collection of research papers focused on recommender systems
- Categorized sections covering topics such as retrieval, reranking, and exploration strategies
- Resources related to reinforcement learning and bandit algorithms in recommendation
- Industry research materials and technical presentations
- Coverage of deep learning methods for recommendation engines
- Structured repository designed for learning and research reference