如果你想深入瞭解深度學習理論,強烈推薦閱讀Deep-Learning-Papers-Reading-Roadmap,該Roadmap整理了深度學習相關的經典論文,在GitHub上,Star 1900+,方便你瞭解深度學習歷史和基礎,掌握深度學習方法,明確深度學習應用方向:
1 Deep Learning History and Basics
1.0 Book
1.1 Survey
1.2 Deep Belief Network(DBN)(Milestone of Deep Learning Eve)
1.3 ImageNet Evolution(Deep Learning broke out from here)
1.4 Speech Recognition Evolution
2 Deep Learning Method
2.1 Model
2.2 Optimization
2.3 Unsupervised Learning / Deep Generative Model
2.4 RNN / Sequence-to-Sequence Model
2.5 Neural Turing Machine
2.6 Deep Reinforcement Learning
2.7 Deep Transfer Learning / Lifelong Learning / especially for RL
2.8 One Shot Deep Learning
3 Applications
3.1 NLP(Natural Language Processing)
3.2 Object Detection
3.3 Visual Tracking
3.4 Image Caption
3.5 Machine Translation
3.6 Robotics
3.7 Art
3.8 Object Segmentation
https://github.com/floodsung/Deep-Learning-Papers-Reading-Roadmap
閱讀更多 深度學習社區 的文章