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Main Authors: Dai, Yang, Ma, Oubo, Zhang, Longfei, Liang, Xingxing, Cao, Xiaochun, Ji, Shouling, Zhang, Jiaheng, Huang, Jincai, Shen, Li
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.12815
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author Dai, Yang
Ma, Oubo
Zhang, Longfei
Liang, Xingxing
Cao, Xiaochun
Ji, Shouling
Zhang, Jiaheng
Huang, Jincai
Shen, Li
author_facet Dai, Yang
Ma, Oubo
Zhang, Longfei
Liang, Xingxing
Cao, Xiaochun
Ji, Shouling
Zhang, Jiaheng
Huang, Jincai
Shen, Li
contents Recent advances in Trajectory Optimization (TO) models have achieved remarkable success in offline reinforcement learning. However, their vulnerabilities against backdoor attacks are poorly understood. We find that existing backdoor attacks in reinforcement learning are based on reward manipulation, which are largely ineffective against the TO model due to its inherent sequence modeling nature. Moreover, the complexities introduced by high-dimensional action spaces further compound the challenge of action manipulation. To address these gaps, we propose TrojanTO, the first action-level backdoor attack against TO models. TrojanTO employs alternating training to enhance the connection between triggers and target actions for attack effectiveness. To improve attack stealth, it utilizes precise poisoning via trajectory filtering for normal performance and batch poisoning for trigger consistency. Extensive evaluations demonstrate that TrojanTO effectively implants backdoor attacks across diverse tasks and attack objectives with a low attack budget (0.3\% of trajectories). Furthermore, TrojanTO exhibits broad applicability to DT, GDT, and DC, underscoring its scalability across diverse TO model architectures.
format Preprint
id arxiv_https___arxiv_org_abs_2506_12815
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TrojanTO: Action-Level Backdoor Attacks against Trajectory Optimization Models
Dai, Yang
Ma, Oubo
Zhang, Longfei
Liang, Xingxing
Cao, Xiaochun
Ji, Shouling
Zhang, Jiaheng
Huang, Jincai
Shen, Li
Machine Learning
Recent advances in Trajectory Optimization (TO) models have achieved remarkable success in offline reinforcement learning. However, their vulnerabilities against backdoor attacks are poorly understood. We find that existing backdoor attacks in reinforcement learning are based on reward manipulation, which are largely ineffective against the TO model due to its inherent sequence modeling nature. Moreover, the complexities introduced by high-dimensional action spaces further compound the challenge of action manipulation. To address these gaps, we propose TrojanTO, the first action-level backdoor attack against TO models. TrojanTO employs alternating training to enhance the connection between triggers and target actions for attack effectiveness. To improve attack stealth, it utilizes precise poisoning via trajectory filtering for normal performance and batch poisoning for trigger consistency. Extensive evaluations demonstrate that TrojanTO effectively implants backdoor attacks across diverse tasks and attack objectives with a low attack budget (0.3\% of trajectories). Furthermore, TrojanTO exhibits broad applicability to DT, GDT, and DC, underscoring its scalability across diverse TO model architectures.
title TrojanTO: Action-Level Backdoor Attacks against Trajectory Optimization Models
topic Machine Learning
url https://arxiv.org/abs/2506.12815