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Main Authors: Hüyük, Alihan, Koblitz, Arndt Ryo, Mohajeri, Atefeh, Andrews, Matthew
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.13108
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author Hüyük, Alihan
Koblitz, Arndt Ryo
Mohajeri, Atefeh
Andrews, Matthew
author_facet Hüyük, Alihan
Koblitz, Arndt Ryo
Mohajeri, Atefeh
Andrews, Matthew
contents In image-based reinforcement learning (RL), policies usually operate in two steps: first extracting lower-dimensional features from raw images (the "recognition" step), and then taking actions based on the extracted features (the "decision" step). Extracting features that are spuriously correlated with performance or irrelevant for decision-making can lead to poor generalization performance, known as observational overfitting in image-based RL. In such cases, it can be hard to quantify how much of the error can be attributed to poor feature extraction vs. poor decision-making. To disentangle the two sources of error, we introduce the notions of recognition regret and decision regret. Using these notions, we characterize and disambiguate the two distinct causes behind observational overfitting: over-specific representations, which include features that are not needed for optimal decision-making (leading to high decision regret), vs. under-specific representations, which only include a limited set of features that were spuriously correlated with performance during training (leading to high recognition regret). Finally, we provide illustrative examples of observational overfitting due to both over-specific and under-specific representations in maze environments and the Atari game Pong.
format Preprint
id arxiv_https___arxiv_org_abs_2409_13108
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Disentangling Recognition and Decision Regrets in Image-Based Reinforcement Learning
Hüyük, Alihan
Koblitz, Arndt Ryo
Mohajeri, Atefeh
Andrews, Matthew
Machine Learning
In image-based reinforcement learning (RL), policies usually operate in two steps: first extracting lower-dimensional features from raw images (the "recognition" step), and then taking actions based on the extracted features (the "decision" step). Extracting features that are spuriously correlated with performance or irrelevant for decision-making can lead to poor generalization performance, known as observational overfitting in image-based RL. In such cases, it can be hard to quantify how much of the error can be attributed to poor feature extraction vs. poor decision-making. To disentangle the two sources of error, we introduce the notions of recognition regret and decision regret. Using these notions, we characterize and disambiguate the two distinct causes behind observational overfitting: over-specific representations, which include features that are not needed for optimal decision-making (leading to high decision regret), vs. under-specific representations, which only include a limited set of features that were spuriously correlated with performance during training (leading to high recognition regret). Finally, we provide illustrative examples of observational overfitting due to both over-specific and under-specific representations in maze environments and the Atari game Pong.
title Disentangling Recognition and Decision Regrets in Image-Based Reinforcement Learning
topic Machine Learning
url https://arxiv.org/abs/2409.13108