Arrow Research search
Back to EWRL

EWRL 2025

Hadamax Encoding: Elevating Performance in Model-Free Atari

Workshop Paper EWRL 2025 Poster Artificial Intelligence · Machine Learning · Reinforcement Learning

Abstract

Neural network architectures have a large impact in machine learning. In reinforcement learning, network architectures have remained notably simple, as changes often lead to small gains in performance. This work introduces a novel encoder architecture for pixel-based model-free reinforcement learning. The Hadamax (Hadamard max}-pooling) encoder achieves state-of-the-art performance by max-pooling Hadamard products between GELU-activated parallel hidden layers. Based on the recent PQN algorithm, the Hadamax encoder achieves state-of-the-art model-free performance in the Atari-57 benchmark. Specifically, without applying any algorithmic hyperparameter modifications, Hadamax-PQN achieves an 80% performance gain over vanilla PQN and significantly surpasses Rainbow-DQN. For reproducibility, the full code will be available after the author notification.

Authors

Keywords

  • atari
  • Model-free

Context

Venue
European Workshop on Reinforcement Learning
Archive span
2008-2025
Indexed papers
649
Paper id
159948209402066321