Applied Deep Learning (2019 Spring) @ NTU
This course is lectured by Yun-Nung (Vivian) Chen and has four homeworks. The four homeworks are as follows:
Dialogue Modeling
Contextual Embeddings
Deep Reinforcement Learning
Conditional Generative Adversarial Nets
Browse this course website for more details.
Dialogue Modeling
Data Preprocessing
Training and Prediction
Results (Recall@10)
Sequence Classification with Contextual Embeddings
Part 1. Train an ELMo to beat the simple baseline
Part 2. Beat the strong baseline with nearly no limitation
Deep Reinforcement Learning
Policy Gradient
Deep Q-Learning (DQN)
Actor-Critic
Conditional Generative Adversarial Nets
Cartoon Set
Evaluation
Train Condiction GANs
Training Tips for Improvement
Evaluate Condiction GANs
FID Scores
Training Progress
Loss and Accuracy
Human Evaluation Results
Results of Four Homeworks
3. Deep Reinforcement Learning
3.2. Deep Q-Learning (DQN)
World\Stage
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4. Conditional Generative Adversarial Nets
Resnet-based ACGAN with BCE loss (resnet_1000)
4.2. Human Evaluation Results
Resnet-based ACGAN with BCE loss (resnet_1000)