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bandit

Some multi-armed bandit code. The code

  • Reproduce some of the results of chapter 2 of the "Reinforcement Learning, An introduction" book, by Sutton and Barto.
  • Reproduce some of the results of [1].
  • Fit model using [1] of experimental data.

File descriptions:

  • models.py -- Simulation of different environment-agent pairs. Each pair has a fixed structure.
  • contextual_bandit.py -- Simulation of the contextual bandit experiment. The environment has the structure of the real experiment. It is possible to define different action rules.
  • ml.py -- Maximum Likelihood estimation of bandit parameters.
  • analysis.py -- Analysis of the models fitted to the experimental data.
  • bandit.py -- Reproduce results from Sutton's book.
  • parse.py -- Parse experimental data.
  • vis.py -- Visualization of results.
  • utils.py -- Some useful functions.
  • filter.py -- Filter parameters for filtfilt (doesn't really belongs here).

[1] N. D. Daw, "Trial-by-trial data analysis using computational models," Decision making, affect, and learning: Attention and performance XXIII, vol. 23, p. 1, 2011.