Q-learning with online random forests

04/07/2022
by   Joosung Min, et al.
4

Q-learning is the most fundamental model-free reinforcement learning algorithm. Deployment of Q-learning requires approximation of the state-action value function (also known as the Q-function). In this work, we provide online random forests as Q-function approximators and propose a novel method wherein the random forest is grown as learning proceeds (through expanding forests). We demonstrate improved performance of our methods over state-of-the-art Deep Q-Networks in two OpenAI gyms (`blackjack' and `inverted pendulum') but not in the `lunar lander' gym. We suspect that the resilience to overfitting enjoyed by random forests recommends our method for common tasks that do not require a strong representation of the problem domain. We show that expanding forests (in which the number of trees increases as data comes in) improve performance, suggesting that expanding forests are viable for other applications of online random forests beyond the reinforcement learning setting.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/20/2013

Consistency of Online Random Forests

As a testament to their success, the theory of random forests has long b...
research
06/25/2019

AMF: Aggregated Mondrian Forests for Online Learning

Random Forests (RF) is one of the algorithms of choice in many supervise...
research
01/24/2023

Mixed Effects Random Forests for Personalised Predictions of Clinical Depression Severity

This work demonstrates how mixed effects random forests enable accurate ...
research
12/23/2019

Large Random Forests: Optimisation for Rapid Evaluation

Random Forests are one of the most popular classifiers in machine learni...
research
08/01/2020

Custom Tailored Suite of Random Forests for Prefetcher Adaptation

To close the gap between memory and processors, and in turn improve perf...
research
07/22/2015

Banzhaf Random Forests

Random forests are a type of ensemble method which makes predictions by ...
research
08/17/2016

Optimal Management of Naturally Regenerating Uneven-aged Forests

A shift from even-aged forest management to uneven-aged management pract...

Please sign up or login with your details

Forgot password? Click here to reset