On the Layer Selection in Small-Scale Deep Networks

A. Muravev, Jenni Raitoharju, M. Gabbouj
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引用次数: 2

Abstract

Deep learning algorithms (in particular Convolutional Neural Networks, or CNNs) have shown their superiority in computer vision tasks and continue to push the state of the art in the most difficult problems of the field. However, deep models frequently lack interpretability. Current research efforts are often focused on increasingly complex and computationally expensive structures. These can be either handcrafted or generated by an algorithm, but in either case the specific choices of individual structural elements are hard to justify. This paper aims to analyze statistical properties of a large sample of small deep networks, where the choice of layer types is randomized. The limited representational power of such models forces them to specialize rather than generalize, resulting in several distinct structural patterns. Observing the empirical performance of structurally diverse weaker models thus allows for some practical insight into the connection between the data and the choice of suitable CNN architectures.
小尺度深度网络中的层选择
深度学习算法(特别是卷积神经网络,简称cnn)已经在计算机视觉任务中显示出其优势,并继续在该领域最困难的问题中推动最新技术的发展。然而,深度模型经常缺乏可解释性。目前的研究工作往往集中在日益复杂和计算昂贵的结构上。它们可以是手工制作的,也可以是由算法生成的,但无论哪种情况,单个结构元素的特定选择都很难证明是合理的。本文旨在分析一个大样本的小型深度网络的统计特性,其中层类型的选择是随机的。这些模型有限的代表性力量迫使它们专门化而不是一般化,从而产生了几种不同的结构模式。因此,观察结构多样的较弱模型的经验性能可以让我们对数据与选择合适的CNN架构之间的联系有一些实际的了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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