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Systematic Generation of Diverse Benchmarks for DNN Verification

机译:系统生成用于DNN验证的各种基准

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The field of verification has advanced due to the interplay of theoretical development and empirical evaluation. Benchmarks play an important role in this by supporting the assessment of the state-of-the-art and comparison of alternative verification approaches. Recent years have witnessed significant developments in the verification of deep neural networks, but diverse benchmarks representing the range of verification problems in this domain do not yet exist. This paper describes a neural network verification benchmark generator, GDVB, that systematically varies aspects of problems in the benchmark that influence verifier performance. Through a series of studies, we illustrate how GDVB can assist in advancing the sub-field of neural network verification by more efficiently providing richer and less biased sets of verification problems.
机译:由于理论发展和实证评估之间的相互作用,验证领域得到了发展。基准在此方面起着重要作用,它可以支持对最新技术的评估以及对替代验证方法的比较。近年来,深度神经网络的验证取得了重大进展,但是尚不存在代表该领域验证问题范围的各种基准。本文介绍了一种神经网络验证基准生成器GDVB,它可以系统地改变基准中影响验证程序性能的问题的各个方面。通过一系列研究,我们说明了GDVB如何通过更有效地提供更多,更少偏见的验证问题集来帮助推进神经网络验证的子领域。

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