On the Trade-off Between Efficiency and Precision of Neural Abstraction

Alec Edwards, Mirco Giacobbe, A. Abate
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Abstract

Neural abstractions have been recently introduced as formal approximations of complex, nonlinear dynamical models. They comprise a neural ODE and a certified upper bound on the error between the abstract neural network and the concrete dynamical model. So far neural abstractions have exclusively been obtained as neural networks consisting entirely of $ReLU$ activation functions, resulting in neural ODE models that have piecewise affine dynamics, and which can be equivalently interpreted as linear hybrid automata. In this work, we observe that the utility of an abstraction depends on its use: some scenarios might require coarse abstractions that are easier to analyse, whereas others might require more complex, refined abstractions. We therefore consider neural abstractions of alternative shapes, namely either piecewise constant or nonlinear non-polynomial (specifically, obtained via sigmoidal activations). We employ formal inductive synthesis procedures to generate neural abstractions that result in dynamical models with these semantics. Empirically, we demonstrate the trade-off that these different neural abstraction templates have vis-a-vis their precision and synthesis time, as well as the time required for their safety verification (done via reachability computation). We improve existing synthesis techniques to enable abstraction of higher-dimensional models, and additionally discuss the abstraction of complex neural ODEs to improve the efficiency of reachability analysis for these models.
神经抽象的效率与精度权衡
神经抽象最近被引入作为复杂的非线性动态模型的形式近似。它们包括一个神经网络ODE和一个抽象神经网络与具体动态模型之间误差的证明上界。到目前为止,神经抽象已经完全被获得为完全由ReLU激活函数组成的神经网络,导致神经ODE模型具有分段仿射动力学,并且可以等效地解释为线性混合自动机。在这项工作中,我们观察到抽象的效用取决于它的使用:一些场景可能需要更容易分析的粗抽象,而另一些场景可能需要更复杂、更精细的抽象。因此,我们考虑可选形状的神经抽象,即分段常数或非线性非多项式(具体而言,通过s型激活获得)。我们采用形式化的归纳综合过程来生成神经抽象,从而产生具有这些语义的动态模型。根据经验,我们证明了这些不同的神经抽象模板在其精度和合成时间以及安全性验证所需的时间(通过可达性计算完成)方面的权衡。我们改进了现有的综合技术,以实现高维模型的抽象,并讨论了复杂神经ode的抽象,以提高这些模型的可达性分析效率。
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