Neuroevolution-Based Inverse Reinforcement Learning

08/09/2016
by   Karan K. Budhraja, et al.
0

The problem of Learning from Demonstration is targeted at learning to perform tasks based on observed examples. One approach to Learning from Demonstration is Inverse Reinforcement Learning, in which actions are observed to infer rewards. This work combines a feature based state evaluation approach to Inverse Reinforcement Learning with neuroevolution, a paradigm for modifying neural networks based on their performance on a given task. Neural networks are used to learn from a demonstrated expert policy and are evolved to generate a policy similar to the demonstration. The algorithm is discussed and evaluated against competitive feature-based Inverse Reinforcement Learning approaches. At the cost of execution time, neural networks allow for non-linear combinations of features in state evaluations. These valuations may correspond to state value or state reward. This results in better correspondence to observed examples as opposed to using linear combinations. This work also extends existing work on Bayesian Non-Parametric Feature Construction for Inverse Reinforcement Learning by using non-linear combinations of intermediate data to improve performance. The algorithm is observed to be specifically suitable for a linearly solvable non-deterministic Markov Decision Processes in which multiple rewards are sparsely scattered in state space. A conclusive performance hierarchy between evaluated algorithms is presented.

READ FULL TEXT

page 4

page 10

page 11

research
06/11/2019

Towards Inverse Reinforcement Learning for Limit Order Book Dynamics

Multi-agent learning is a promising method to simulate aggregate competi...
research
07/07/2021

Learning Time-Invariant Reward Functions through Model-Based Inverse Reinforcement Learning

Inverse reinforcement learning is a paradigm motivated by the goal of le...
research
11/24/2016

Multiscale Inverse Reinforcement Learning using Diffusion Wavelets

This work presents a multiscale framework to solve an inverse reinforcem...
research
03/28/2017

Inverse Reinforcement Learning from Incomplete Observation Data

Inverse reinforcement learning (IRL) aims to explain observed strategic ...
research
03/01/2018

Inverse Reinforcement Learning via Nonparametric Spatio-Temporal Subgoal Modeling

Recent advances in the field of inverse reinforcement learning (IRL) hav...
research
11/21/2020

Neural Network iLQR: A New Reinforcement Learning Architecture

As a notable machine learning paradigm, the research efforts in the cont...
research
01/14/2018

Deep Reinforcement Fuzzing

Fuzzing is the process of finding security vulnerabilities in input-proc...

Please sign up or login with your details

Forgot password? Click here to reset