LGAINov 7, 2023

Expressivity of ReLU-Networks under Convex Relaxations

ETH Zurich
arXiv:2311.04015v18 citationsh-index: 64
Originality Incremental advance
AI Analysis

This addresses a key problem in training and certifying safe neural networks, revealing inherent limitations of convex relaxations, which is incremental but important for the field.

The paper investigates whether the accuracy gap between convex relaxations and standard neural networks is due to fundamental limitations, showing that even advanced relaxations cannot precisely analyze certain multivariate convex monotone CPWL functions with ReLU networks.

Convex relaxations are a key component of training and certifying provably safe neural networks. However, despite substantial progress, a wide and poorly understood accuracy gap to standard networks remains, raising the question of whether this is due to fundamental limitations of convex relaxations. Initial work investigating this question focused on the simple and widely used IBP relaxation. It revealed that some univariate, convex, continuous piecewise linear (CPWL) functions cannot be encoded by any ReLU network such that its IBP-analysis is precise. To explore whether this limitation is shared by more advanced convex relaxations, we conduct the first in-depth study on the expressive power of ReLU networks across all commonly used convex relaxations. We show that: (i) more advanced relaxations allow a larger class of univariate functions to be expressed as precisely analyzable ReLU networks, (ii) more precise relaxations can allow exponentially larger solution spaces of ReLU networks encoding the same functions, and (iii) even using the most precise single-neuron relaxations, it is impossible to construct precisely analyzable ReLU networks that express multivariate, convex, monotone CPWL functions.

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