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Structure Pruning Strategies for Min-Max Modular Network

机译:最小-最大模块化网络的结构修剪策略

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摘要

The min-max modular network has been shown to be an efficient classifier, especially in solving large-scale and complex pattern classification problems. Despite its high modularity and parallelism, it suffers from quadratic complexity in space when a multiple-class problem is decomposed into a number of linearly separable problems. This paper proposes two new pruning methods and an integrated process to reduce the redundancy of the network and optimize the network structure. We show that our methods can prune a lot of redundant modules in comparison with the original structure while maintaining the generalization accuracy.
机译:最小-最大模块化网络已被证明是一种有效的分类器,特别是在解决大规模和复杂的模式分类问题中。尽管它具有很高的模块化和并行性,但是当将多类问题分解为许多线性可分离的问题时,它却遭受二次方空间的困扰。本文提出了两种新的修剪方法和一个集成过程,以减少网络的冗余并优化网络结构。我们表明,与原始结构相比,我们的方法可以修剪许多冗余模块,同时保持泛化精度。

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