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Main Authors: Javed, Khurram, Sutton, Richard S.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.19539
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author Javed, Khurram
Sutton, Richard S.
author_facet Javed, Khurram
Sutton, Richard S.
contents Javed, Sharifnassab, and Sutton (2024) introduced a new algorithm for TD learning -- SwiftTD -- that augments True Online TD($λ$) with step-size optimization, a bound on the effective learning rate, and step-size decay. In their experiments SwiftTD outperformed True Online TD($λ$) and TD($λ$) on a variety of prediction tasks derived from Atari games, and its performance was robust to the choice of hyper-parameters. In this extended abstract we extend SwiftTD to work for control problems. We combine the key ideas behind SwiftTD with True Online Sarsa($λ$) to develop an on-policy reinforcement learning algorithm called $\textit{Swift-Sarsa}$. We propose a simple benchmark for linear on-policy control called the $\textit{operant conditioning benchmark}$. The key challenge in the operant conditioning benchmark is that a very small subset of input signals are relevant for decision making. The majority of the signals are noise sampled from a non-stationary distribution. To learn effectively, the agent must learn to differentiate between the relevant signals and the noisy signals, and minimize prediction errors by assigning credit to the weight parameters associated with the relevant signals. Swift-Sarsa, when applied to the operant conditioning benchmark, learned to assign credit to the relevant signals without any prior knowledge of the structure of the problem. It opens the door for solution methods that learn representations by searching over hundreds of millions of features in parallel without performance degradation due to noisy or bad features.
format Preprint
id arxiv_https___arxiv_org_abs_2507_19539
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Swift-Sarsa: Fast and Robust Linear Control
Javed, Khurram
Sutton, Richard S.
Machine Learning
Artificial Intelligence
Javed, Sharifnassab, and Sutton (2024) introduced a new algorithm for TD learning -- SwiftTD -- that augments True Online TD($λ$) with step-size optimization, a bound on the effective learning rate, and step-size decay. In their experiments SwiftTD outperformed True Online TD($λ$) and TD($λ$) on a variety of prediction tasks derived from Atari games, and its performance was robust to the choice of hyper-parameters. In this extended abstract we extend SwiftTD to work for control problems. We combine the key ideas behind SwiftTD with True Online Sarsa($λ$) to develop an on-policy reinforcement learning algorithm called $\textit{Swift-Sarsa}$. We propose a simple benchmark for linear on-policy control called the $\textit{operant conditioning benchmark}$. The key challenge in the operant conditioning benchmark is that a very small subset of input signals are relevant for decision making. The majority of the signals are noise sampled from a non-stationary distribution. To learn effectively, the agent must learn to differentiate between the relevant signals and the noisy signals, and minimize prediction errors by assigning credit to the weight parameters associated with the relevant signals. Swift-Sarsa, when applied to the operant conditioning benchmark, learned to assign credit to the relevant signals without any prior knowledge of the structure of the problem. It opens the door for solution methods that learn representations by searching over hundreds of millions of features in parallel without performance degradation due to noisy or bad features.
title Swift-Sarsa: Fast and Robust Linear Control
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2507.19539