YouTube推荐系统Paper[2016]-Deep Neural Networks for YouTube Recommendations.pdf YouTube推荐系统Paper[2016]-Deep Neural Networks for YouTube Recommendations.pdf
2021-01-28 05:02:13 880KB Youtube 推荐系统 paper 深度网路
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AI NEUROSCIENCE: VISUALIZING AND UNDERSTANDING DEEP NEURAL NETWORKS
2021-01-28 04:57:35 42.38MB 可视化 深度神经网络
Texture Synthesis Using Convolutional Neural Networks
2021-01-28 00:46:49 17.6MB texturesynthesi
This book attempts to simplify and present the concepts of deep learning in a very comprehensive manner, with suitable, full-fledged examples of neural network architectures, such as Recurrent Neural Networks (RNNs) and Sequence to Sequence (seq2seq), for Natural Language Processing (NLP) tasks. The book tries to bridge the gap between the theoretical and the applicable. It proceeds from the theoretical to the practical in a progressive manner, first by presenting the fundamentals, followed by the underlying mathematics, and, finally, the implementation of relevant examples. The first three chapters cover the basics of NLP, starting with the most frequently used Python libraries, word vector representation, and then advanced algorithms like neural networks for textual data. The last two chapters focus entirely on implementation, dealing with sophisticated architectures like RNN, Long Short-Term Memory (LSTM) Networks, Seq2seq, etc., using the widely used Python tools TensorFlow and Keras. We have tried our best to follow a progressive approach, combining all the knowledge gathered to move on to building a questionand- answer system. The book offers a good starting point for people who want to get started in deep learning, with a focus on NLP. All the code presented in the book is available on GitHub, in the form of IPython notebooks and scripts, which allows readers to try out these examples and extend them in interesting, personal ways.
2020-11-10 22:22:20 4.76MB 深度学习 python
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ImageNet classification with deep convolutional neural networks 中文翻译
2020-02-13 03:02:37 590KB AlexNet, 论文翻译
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提供了Neural networks and deep learning这本书所有的章节pdf版内容。另外,读者如果想要书中源代码,可以从https://github.com/mnielsen/neural-networks-and-deep-learning下载。
2020-01-29 03:02:27 5.54MB 机器学习 深度学习 神经网络
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Michael Nielsen的⼀本书兼顾理论和动⼿实践的书。讲解了神经网络和深度学习的众多核心概念,也包含了作者对深度学习的深刻理解和透彻思考,并附代码实例。非常适合初学者入门。
2019-12-21 22:21:56 21.11MB 神经网络 深度学习 机器学习
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During the 1980s and early 1990s there was significant work in the design and implementation of hardware neurocomputers. Nevertheless, most of these efforts may be judged to have been unsuccessful: at no time have have hardware neurocomputers been in wide use. This lack of success may be largely attributed to the fact that earlier work was almost entirely aimed at developing custom neurocomputers, based on ASIC technology, but for such niche areas this technology was never sufficiently developed or competitive enough to justify large-scale adoption. On the other hand, gate-arrays of the period mentioned were never large enough nor fast enough for serious artificial-neuralnetwork (ANN) applications. But technology has now improved: the capacity and performance of current FPGAs are such that they present a much more realistic alternative. Consequently neurocomputers based on FPGAs are now a much more practical proposition than they have been in the past. This book summarizes some work towards this goal and consists of 12 papers that were selected, after review, from a number of submissions. The book is nominally divided into three parts: Chapters 1 through 4 deal with foundational issues; Chapters 5 through 11 deal with a variety of implementations; and Chapter 12 looks at the lessons learned from a large-scale project and also reconsiders design issues in light of current and future technology.
2019-12-21 22:13:13 4.49MB FPGA neural networks
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Deep learning in neural networks: An overview In recent years, deep artificial neural networks (including recurrent ones) have won numerous contests in pattern recognition and machine learning. This historical survey compactly summarizes relevant work, much of it from the previous millennium. Shallow and Deep Learners are distinguished by the depth of their credit assignment paths, which are chains of possibly learnable, causal links between actions and effects. I review deep supervised learning (also recapitulating the history of backpropagation),unsupervised learning, reinforcement learning & evolutionary computation, and indirect search for short programs encoding deep and large networks.
2019-12-21 22:10:19 840KB deep learning neural networks
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Deep Neural Networks for YouTube Recommendations论文翻译
2019-12-21 22:00:15 2.09MB DNN youtube 推荐系统
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