Formalising the Foundations of Discrete Reinforcement Learning in Isabelle/HOL

12/11/2021
by   Mark Chevallier, et al.
0

We present a formalisation of finite Markov decision processes with rewards in the Isabelle theorem prover. We focus on the foundations required for dynamic programming and the use of reinforcement learning agents over such processes. In particular, we derive the Bellman equation from first principles (in both scalar and vector form), derive a vector calculation that produces the expected value of any policy p, and go on to prove the existence of a universally optimal policy where there is a discounting factor less than one. Lastly, we prove that the value iteration and the policy iteration algorithms work in finite time, producing an epsilon-optimal and a fully optimal policy respectively.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/21/2022

On the connection between Bregman divergence and value in regularized Markov decision processes

In this short note we derive a relationship between the Bregman divergen...
research
12/27/2019

Quantum Logic Gate Synthesis as a Markov Decision Process

Reinforcement learning has witnessed recent applications to a variety of...
research
01/15/2014

Policy Iteration for Decentralized Control of Markov Decision Processes

Coordination of distributed agents is required for problems arising in m...
research
04/12/2010

Dynamic Policy Programming

In this paper, we propose a novel policy iteration method, called dynami...
research
04/01/2019

Dynamically optimal treatment allocation using Reinforcement Learning

Consider a situation wherein a stream of individuals arrive sequentially...
research
06/09/2022

There is no Accuracy-Interpretability Tradeoff in Reinforcement Learning for Mazes

Interpretability is an essential building block for trustworthiness in r...

Please sign up or login with your details

Forgot password? Click here to reset