BAYESIAN OPTIMIZATION OF HYPERPARAMETERS FOR RAINBOW DQN IN THE CARTPOLE-V1 ENVIRONMENT

ICTACT Journal on Data Science and Machine Learning ( Volume: 7 , Issue: 2 )

Abstract

This paper presents a Bayesian optimization approach to hyperparameter tuning for the Rainbow DQN reinforcement learning algorithm, using the Hyperopt library and the CartPole-v1 environment as a benchmark. The study investigates the impact of search space definition on the convergence and quality of optimized hyperparameters. Further, it analyzes the effectiveness of different evaluation methods in the context of hyperparameter optimization for deep reinforcement learning. Results demonstrate the efficacy of Bayesian optimization in identifying high-performing hyperparameter configurations for Rainbow DQN in this control task.

Authors

Akhil Veluru
Naveen Jindal School of Management, University of Texas, United States of America

Keywords

Bayesian Optimization Approach, Rainbow DQN Reinforcement Learning, Hyperparameter Optimization

Published By
ICTACT
Published In
ICTACT Journal on Data Science and Machine Learning
( Volume: 7 , Issue: 2 )
Date of Publication
March 2026
Pages
990 - 995
Page Views
34
Full Text Views