CTBENCH: A Library and Benchmark for Certified Training
This work addresses the problem of inconsistent evaluations in certified training research for the machine learning community, providing a standardized benchmark to improve comparability and insights, though it is incremental as it builds on existing methods.
The authors tackled the challenge of comparing certified training algorithms by introducing CTBench, a unified library and benchmark that evaluates algorithms under fair settings and tuned hyperparameters, showing that most algorithms surpass previously reported performance and that advantages of recent algorithms diminish with fair baselines.
Training certifiably robust neural networks is an important but challenging task. While many algorithms for (deterministic) certified training have been proposed, they are often evaluated on different training schedules, certification methods, and systematically under-tuned hyperparameters, making it difficult to compare their performance. To address this challenge, we introduce CTBench, a unified library and a high-quality benchmark for certified training that evaluates all algorithms under fair settings and systematically tuned hyperparameters. We show that (1) almost all algorithms in CTBench surpass the corresponding reported performance in literature in the magnitude of algorithmic improvements, thus establishing new state-of-the-art, and (2) the claimed advantage of recent algorithms drops significantly when we enhance the outdated baselines with a fair training schedule, a fair certification method and well-tuned hyperparameters. Based on CTBench, we provide new insights into the current state of certified training, including (1) certified models have less fragmented loss surface, (2) certified models share many mistakes, (3) certified models have more sparse activations, (4) reducing regularization cleverly is crucial for certified training especially for large radii and (5) certified training has the potential to improve out-of-distribution generalization. We are confident that CTBench will serve as a benchmark and testbed for future research in certified training.