Awesome
LowRankMDP
This directory contains the supplement code for the paper titled "Value Function Approximation via Low-Rank Models" by Hao Yi Ong. See here for the paper.
Here you will find implementations of the following:
- Classic mountain car and inverted pendulum MDPs and solutions obtained by value iteration
- Low-rank + sparsification of state-action value function using external MATLAB library for Robust PCA (Lin et al., 2009)
Dependencies
The software is implemented in Julia, with calls from Julia to an external MATLAB library. (So the user must have a local version of MATLAB.) For the best results, the user should use a notebook. Example notebooks are shown in both the mdps
and lrm
subdirectories. The following Julia packages are required for running all code.
- PGFPlots
- GridInterpolations
Layout
data/
lrm/
PROPACK/
LowRankModel.jl
LowRankModeling.ipynb
choosvd.m
exact_alm_rpca.m
mdps/
InvertedPendulum.ipynb
InvertedPendulum.jl
MDPs.jl
MountainCar.ipynb
MountainCar.jl
SPDot.jl
README.md