Skip to content

Latest commit

 

History

History
146 lines (127 loc) · 13.7 KB

README.md

File metadata and controls

146 lines (127 loc) · 13.7 KB

Summaries of Machine Learning (mostly Reinforcement Learning) papers

Inspired by Adrian Colyer, Denny Britz and Daniel Seita

This contains my notes for research papers that are relevant for my PhD on Machine Learning. First, I list papers that I've read and papers that I want to read. Then, read papers are numbered on a (1) to (5) scale where a (1) means I have only barely skimmed it, while a (5) means I feel confident that I understand almost everything about the paper. The links here go to my paper summaries if I have them, otherwise those papers are on my TODO list.

Contents:

Machine Learning papers

Papers I've read

Special: Notes and thoughts about VAEs and how to make them work! Based on the following papers:

Papers I want to read

  • FeUdal Networks for Hierarchical Reinforcement Learning
  • Diversity is All You Need: Learning Skills without a Reward Function
  • Learning to Search Better than Your Teacher
  • Transfer in Variable-Reward Hierarchical Reinforcement Learning
  • Curriculum Learning
  • Theoretical TL papers from TL survey

Questions for which I need the answer

I need the answers to these questions. Any help is welcome ! Reach me at [email protected]