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Machine Learning and having it Deep and Structured (MLDS) in 2018 spring

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MLDS2018SPRING

This course has four homeworks, group by group. The four homeworks are as follows:

  1. Deep Learning Theory
  2. Sequence-to-sequence Model
  3. Deep Generative Model
  4. Deep Reinforcement Learning

Table of Contents

  1. Deep Learning Theory
  2. Sequence-to-sequence Model
  3. Deep Generative Model
  4. Deep Reinforcement Learning

Results of Four Homeworks

1. Deep Learning Theory

2. Sequence-to-sequence Model

3. Deep Generative Model

  • report.pdf

  • Image Generation: 100% (25/25) Pass Baseline

./gan-baseline/baseline_result_gan.png
  • Text-to-Image Generation: 100% (25/25) Pass Baseline
Testing Tags ./gan-baseline/baseline_result_cgan.png
blue hair blue eyes


blue hair green eyes


blue hair red eyes


green hair blue eyes


green hair red eyes

4. Deep Reinforcement Learning

  • report.pdf
  • Policy Gradient: Mean Rewards in 30 Episodes = 16.466666666666665

  • Deep Q Learning: Mean Rewards in 100 Episodes = 73.16

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Machine Learning and having it Deep and Structured (MLDS) in 2018 spring

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