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Awesome Deep Learning papers for industrial Search, Recommendation and Advertising. They focus on Embedding, Matching, Ranking (CTR and CVR prediction), Post Ranking, Multi-task Learning, Graph Neural Networks, Transfer Learning, Reinforcement Learning, Self-supervised Learning and so on.

guyulongcs/Awesome-Deep-Learning-Papers-for-Search-Recommendation-Advertising

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Awesome Deep Learning papers for industrial Search, Recommendation and Advertisement. They focus on Embedding, Matching, Ranking (CTR prediction, CVR prediction), Post Ranking, Transfer and Reinforcement Learning.

00_Embedding

01_Matching

ANN

Graph_Neural_Networks

02_Pre-ranking

03_Ranking

Classic

DNN

Delayed-Feedback-Problem

Feature-Crossing

Longterm-Sequence-Modeling

Multi-Modal

Multi-Scenario

Multi-domain

Multi-task

Personalized-Network-Weights

Pre-training

Sequence-Modeling

Trigger

04_Post-ranking

Seq2Slate

05_Relevance

06_Cascade

07_Self_Supervised_Learning

08_LLM

09_Transfer_Learning

Cross-domain

Meta-Learning

Transfer

10_Reinforcement_Learning

11_Multimodal

Conference

CIKM2023

KDD2023

WSDM2022

WWW2022

Corporation

Google

JDRecSys

TaobaoSearch

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Awesome Deep Learning papers for industrial Search, Recommendation and Advertising. They focus on Embedding, Matching, Ranking (CTR and CVR prediction), Post Ranking, Multi-task Learning, Graph Neural Networks, Transfer Learning, Reinforcement Learning, Self-supervised Learning and so on.

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