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ReSet: Learning Recurrent Dynamic Routing in ResNet-like Neural Networks

机译:重置:在类似ResNet的神经网络中学习递归动态路由

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Neural Network is a powerful Machine Learning tool that shows outstanding performance in Computer Vision, Natural Language Processing, and Artificial Intelligence. In particular, recently proposed ResNet architecture and its modifications produce state-of-the-art results in image classification problems. ResNet and most of the previously proposed architectures have a fixed structure and apply the same transformation to all input images. In this work, we develop a ResNet-based model that dynamically selects Computational Units (CU) for each input object from a learned set of transformations. Dynamic selection allows the network to learn a sequence of useful transformations and apply only required units to predict the image label. We compare our model to ResNet-38 architecture and achieve better results than the original ResNet on CIFAR-10.1 test set. While examining the produced paths, we discovered that the network learned different routes for images from different classes and similar routes for similar images.
机译:神经网络是功能强大的机器学习工具,在计算机视觉,自然语言处理和人工智能方面表现出卓越的性能。特别是,最近提出的ResNet体系结构及其修改产生了图像分类问题的最新结果。 ResNet和大多数先前提出的体系结构都具有固定的结构,并对所有输入图像应用相同的转换。在这项工作中,我们开发了一个基于ResNet的模型,该模型从学习的一组转换中为每个输入对象动态选择计算单位(CU)。动态选择允许网络学习一系列有用的转换,并仅应用所需的单位来预测图像标签。我们将模型与ResNet-38架构进行了比较,并获得了比CIFAR-10.1测试集上的原始ResNet更好的结果。在检查产生的路径时,我们发现网络从不同类别的图像中学习了不同的路线,并为相似的图像学习了相似的路线。

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