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Main Authors: Moodley, Perusha, Kaushik, Pramod, Thambi, Dhillu, Trovinger, Mark, Paruchuri, Praveen, Hong, Xia, Rosman, Benjamin
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.01310
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author Moodley, Perusha
Kaushik, Pramod
Thambi, Dhillu
Trovinger, Mark
Paruchuri, Praveen
Hong, Xia
Rosman, Benjamin
author_facet Moodley, Perusha
Kaushik, Pramod
Thambi, Dhillu
Trovinger, Mark
Paruchuri, Praveen
Hong, Xia
Rosman, Benjamin
contents Decision Transformers, in their vanilla form, struggle to perform on image-based environments with multi-discrete action spaces. Although enhanced Decision Transformer architectures have been developed to improve performance, these methods have not specifically addressed this problem of multi-discrete action spaces which hampers existing Decision Transformer architectures from learning good representations. To mitigate this, we propose Multi-State Action Tokenisation (M-SAT), an approach for tokenising actions in multi-discrete action spaces that enhances the model's performance in such environments. Our approach involves two key changes: disentangling actions to the individual action level and tokenising the actions with auxiliary state information. These two key changes also improve individual action level interpretability and visibility within the attention layers. We demonstrate the performance gains of M-SAT on challenging ViZDoom environments with multi-discrete action spaces and image-based state spaces, including the Deadly Corridor and My Way Home scenarios, where M-SAT outperforms the baseline Decision Transformer without any additional data or heavy computational overheads. Additionally, we find that removing positional encoding does not adversely affect M-SAT's performance and, in some cases, even improves it.
format Preprint
id arxiv_https___arxiv_org_abs_2407_01310
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-State-Action Tokenisation in Decision Transformers for Multi-Discrete Action Spaces
Moodley, Perusha
Kaushik, Pramod
Thambi, Dhillu
Trovinger, Mark
Paruchuri, Praveen
Hong, Xia
Rosman, Benjamin
Machine Learning
Computer Vision and Pattern Recognition
Decision Transformers, in their vanilla form, struggle to perform on image-based environments with multi-discrete action spaces. Although enhanced Decision Transformer architectures have been developed to improve performance, these methods have not specifically addressed this problem of multi-discrete action spaces which hampers existing Decision Transformer architectures from learning good representations. To mitigate this, we propose Multi-State Action Tokenisation (M-SAT), an approach for tokenising actions in multi-discrete action spaces that enhances the model's performance in such environments. Our approach involves two key changes: disentangling actions to the individual action level and tokenising the actions with auxiliary state information. These two key changes also improve individual action level interpretability and visibility within the attention layers. We demonstrate the performance gains of M-SAT on challenging ViZDoom environments with multi-discrete action spaces and image-based state spaces, including the Deadly Corridor and My Way Home scenarios, where M-SAT outperforms the baseline Decision Transformer without any additional data or heavy computational overheads. Additionally, we find that removing positional encoding does not adversely affect M-SAT's performance and, in some cases, even improves it.
title Multi-State-Action Tokenisation in Decision Transformers for Multi-Discrete Action Spaces
topic Machine Learning
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.01310