第一周:深度学习引言(Introduction to Deep Learning) 欢迎(Welcome) 深度学习改变了传统互联网业务,例如如网络搜索和广告.但是深度学习同时也使得许多新产品和企业以很多方式帮助人们,从获得更好的健康关注. 深度学习做的非常好的一个方面就是读取 X 光图像,到生活中的个性化教育,到精准化农业,甚至到驾驶汽车以及其它一些方面.如果你想要学习深度学习的这些工具,并应用它们来做这些令人窒息的操作,本课程将帮助你做到这一点.当你完成 cousera 上面的这一系列专项课…
Deeplearning原文作者Hinton代码注解 Matlab示例代码为两部分,分别对应不同的论文: . Reducing the Dimensionality of data with neural networks ministdeepauto.m backprop.m rbmhidlinear.m . A fast learing algorithm for deep belief net mnistclassify.m backpropclassfy.m 其余部分代码通用. %%%%…
Neural Networks and Deep Learning This is the first course of the deep learning specialization at Coursera which is moderated by moderated by DeepLearning.ai. The course is taught by Andrew Ng. Introduction to deep learning Be able to explain the maj…
About this Course If you want to break into cutting-edge AI, this course will help you do so. Deep learning engineers are highly sought after, and mastering deep learning will give you numerous new career opportunities. Deep learning is also a new "s…
第四周:深层神经网络(Deep Neural Networks) 4.1 深层神经网络(Deep L-layer neural network) 有一些函数,只有非常深的神经网络能学会,而更浅的模型则办不到. 对于给定的问题很难去提前预测到底需要多深的神经网络,所以先去尝试逻辑回归,尝试一层然后两层隐含层, 然后把隐含层的数量看做是另一个可以自由选择大小的超参数,然后再保留交叉验证数据上 评估,或者用开发集来评估. 一些符号注意: 用 L 表示层数,上图5hidden layers :…
CNN综述文章 的翻译 [2019 CVPR] A Survey of the Recent Architectures of Deep Convolutional Neural Networks 翻译 综述深度卷积神经网络架构:从基本组件到结构创新 目录 摘要    1.引言    2.CNN基本组件        2.1 卷积层        2.2 池化层        2.3 激活函数        2.4 批次归一化        2.5 Dropout        2.6 全连接层…
郑重声明:原文参见标题,如有侵权,请联系作者,将会撤销发布! 原文链接:https://arxiv.org/pdf/2005.05941.pdf Contents: Abstract Introduction 1 Reinforcement learning with a network of spiking agents 2 Related Work 2.0.1 Hedonism 2.0.2 Learning by reinforcement in spiking neural network…
ON THE EVOLUTION OF MACHINE LEARNING: FROM LINEAR MODELS TO NEURAL NETWORKS We recently interviewed Reza Zadeh (@Reza_Zadeh). Reza is a Consulting Professor in the Institute for Computational and Mathematical Engineering at Stanford University and a…
by Jason Brownlee on December 20, 2017 in Better Deep Learning Transfer learning is a machine learning method where a model developed for a task is reused as the starting point for a model on a second task. It is a popular approach in deep learning w…
目录 概 主要内容 LSGD Box 初始化 Box for Resnet 代码 Cyr E C, Gulian M, Patel R G, et al. Robust Training and Initialization of Deep Neural Networks: An Adaptive Basis Viewpoint.[J]. arXiv: Learning, 2019. @article{cyr2019robust, title={Robust Training and Initi…