imsheridan/DeepRec
推荐、广告工业界经典以及最前沿的论文、资料集合/ Must-read Papers on Recommendation System and CTR Prediction
This is a curated collection of research papers and industry insights focused on recommendation systems and predicting click-through rates (CTR) in advertising. It provides a structured overview of classic and cutting-edge techniques. E-commerce strategists, advertising specialists, and data scientists looking to enhance their recommendation engines and ad targeting models would find this helpful for staying current with industry best practices.
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Use this if you are an industry professional seeking to understand the latest research and proven methods for building advanced recommendation systems or improving advertising click-through rates.
Not ideal if you are looking for ready-to-use code, software, or immediate implementation guides rather than academic papers and conceptual frameworks.
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