BackdoorBench: A Comprehensive Benchmark and Analysis of Backdoor Learning
Baoyuan Wu, Hongrui Chen, Mingda Zhang, Zihao Zhu, Shaokui Wei, Danni, Yuan, Mingli Zhu, Ruotong Wang, Li Liu, Chao Shen

TL;DR
BackdoorBench is a comprehensive, standardized benchmark for backdoor learning in deep neural networks, providing implementations, evaluations, and insights to advance research in this critical area.
Contribution
It offers an integrated platform with state-of-the-art algorithms, extensive evaluations, and analysis tools to facilitate fair comparison and understanding of backdoor learning methods.
Findings
Extensive evaluation of attack-defense pairs across datasets and models
Insights into the effectiveness of different backdoor strategies
Identification of key factors influencing backdoor success
Abstract
As an emerging approach to explore the vulnerability of deep neural networks (DNNs), backdoor learning has attracted increasing interest in recent years, and many seminal backdoor attack and defense algorithms are being developed successively or concurrently, in the status of a rapid arms race. However, mainly due to the diverse settings, and the difficulties of implementation and reproducibility of existing works, there is a lack of a unified and standardized benchmark of backdoor learning, causing unfair comparisons or unreliable conclusions (e.g., misleading, biased or even false conclusions). Consequently, it is difficult to evaluate the current progress and design the future development roadmap of this literature. To alleviate this dilemma, we build a comprehensive benchmark of backdoor learning called BackdoorBench. Our benchmark makes three valuable contributions to the research…
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Taxonomy
TopicsMobile Learning in Education
