We present a notion of bisimulation that induces a reduced network which is semantically equivalent to the given neural network. We provide a minimization algorithm to construct the smallest bisimulation equivalent network. Reductions that construct bisimulation equivalent neural networks are limited in the scale of reduction. We present an approximate notion of bisimulation that provides semantic closeness, rather than, semantic equivalence, and quantify semantic deviation between the neural networks that are approximately bisimilar. The latter provides a trade-off between the amount of reduction and deviations in the semantics.
翻译:我们提出了一种减肥概念,它引导一个与给定神经网络等同的减肥网络。我们提供了一种最小化算法,以构建最小的减肥等同网络。在减肥规模中,构建减肥等同神经网络的减肥是有限的。我们提出了一种大致的减肥概念,它提供了语义密切性,而不是语义等同性,并量化了神经网络之间大致两样的语义偏差。后者在词义的减减量量和偏差之间提供了一种权衡。