1. Research background and rationale
1958, Rosenblatt proposed Perceptron model (ANN)In 1986, Hinton proposed a deep neural network with multiple hidden layers (MNN)In the 2006, Hinton Advanced Confidence Network (DBN), which became the main frame of deep learning.Then, the efficiency of this algorithm is validated by Bengio Experiment 2.3 classes of depth learning
deep understanding of machine learning: Learning Notes from principles to algorithms-1th week 02 easy to get started
Deep understanding of machine learning from principle to algorithmic learning notes-1th week 02 Easy to get star
The preface introduces the basic concepts of machine learning and depth learning, the catalogue of this series, the advantages of depth learning and so on.
This section by hot iron first talk about deep reinforcement study.
Speaking of the coolest branch of machine learning,
Series Catalog:Seq2seq chatbot chat Robot: A demo build based on Torch CodexDeep Learning (bot direction) learning notes (1) Sequence2sequence LearningDeep Learning (bot direction) learning Notes (2) RNN Encoder-decoder and LSTM study 1 preface
This deep
Bengio, LeCun, Jordan, Hinton, Schmidhuber, Ng, de Freitas and OpenAI had done Reddit AMA's. These is nice places-to-start to get a zeitgeist of the field.Hinton and Ng lectures at Coursera, UFLDL, cs224d and cs231n at Stanford, the deep learning course at udacity, and the sum Mer School at IPAM has excellent tutorials, video lectures and programming exercises that should help you get STARTED.NB Sp The onli
Source: http://wanghaitao8118.blog.163.com/blog/static/13986977220153811210319/Google's deep-mind team published a bull X-ray article in Nips in 2013, which blinded many people and unfortunately I was in it. Some time ago collected a lot of information about this, has been lying in the collection, is currently doing some related work (want to have a small partner to communicate).First, related articlesOn the DRL, this aspect of the work should be with
This is a creation in
Article, where the information may have evolved or changed.
The concept of deep learning has been very hot in recent years, and we are fortunate to have caught up with and witnessed the rise of this wave. Remember the 2012 before the mention of deep learning, most people are not familiar with, and
Preface: Today just heard a talk about Extreme learning Machine (Super limited learning machine), the speaker is Elm Huangguang Professor . The effect of elm is naturally much better than the SVM,BP algorithm. and relatively than the current most fire deep learning, it has a great advantage: the operation speed is ve
Deep learning "engine" contention: GPU acceleration or a proprietary neural network chip?Deep Learning (Deepin learning) has swept the world in the past two years, the driving role of big data and high-performance computing platform is very important, can be described as
Turn from 70271574AI (AI) is the future, is science fiction, is part of our daily life. All the assertions are correct, just to see what you are talking about AI in the end.For example, when Google DeepMind developed the Alphago program to defeat the Korean professional Weiqi master Lee Se-dol, the media in the description of the victory of DeepMind used AI, machine learning, deep
Deep learning, a prominent topic in the field of artificial intelligence, has been concerned for quite a long time. It is a concern because of breakthroughs in the areas of computer vision (computer vision) and gaming (Alpha GO) that transcend human capabilities. Since the last survey, there has been a significant increase in attention to deep
This article refers to http://blog.csdn.net/zdy0_2004/article/details/43896015 translation and the original file:///F:/%E6%9C%BA%E5%99%A8%E5%AD%A6%E4%B9% A0/recommending%20music%20on%20spotify%20with%20deep%20learning%20%e2%80%93%20sander%20dieleman.htmlThis article is a blog post by Dr. Sander Dieleman, Reservoir Lab Laboratory at the University of Ghent (Ghent University) in Belgium, where his research focuses on the classification of Music audio signals and the recommended hierarchical charac
He admired the bronze teacher for a long time, and when he learned that he had written a book on learning methods, "The art of deep learning", he bought the first ebook I paid for in my life on the Amazon China website.This reading note is not exactly in accordance with the original book narrative sequence excerpt, but through my modification and collation.Readin
Deep learning part of the direction of Paper, for personal use.a RNN1 Recurrent neural network based language modelThe RNN used in the language model2 statistical Language Models Based on neural NetworksMikolov's doctoral dissertation, which focuses his work on the language model of RNN in tandem3 Extensions of recurrent neural Network Language ModelContinuation of the RNN, some improvements in the network,
Reproduced http://blog.csdn.net/zhoutongchi/article/details/8191991
Learning ing functions and literature applied in behavior recognition/image classification (models and non-models are associated with each other, and algorithms are mutually adopted. There is no clear distinction between them, including the bionic literature)
%The research focuses on ICA model and deep
Python implementation of multilayer neural networks.
The code is pasted first, the programming thing is not explained.
Basic theory reference Next: Deep Learning Learning Notes (iii): Derivation of neural network reverse propagation algorithm
Supervisedlearningmodel, Nnlayer, and softmaxregression that appear in your code, refer to the previous note:
Source: http://tech.163.com/16/0427/07/BLL3TM9M00094P0U.htmlEditor's note: 2016 is the 60 anniversary of Ai's birthday. April 22, the 2016 Global AI Technology Conference (GAITC) and AI 60 commemoration ceremony was held in Beijing National Convention Center, about 1600 experts, academics and industry members attended the conference.The special report of the General Assembly is chaired by the Deputy Secretary-General of China AI Society and Dr. Kaiyu, founder and CEO of Horizon Robotics. Guests
Free and open source mobile deep The learning framework, deploying by Baidu.
This is the simply deploying CNN on mobile devices with the low complexity and the high speed. It supports calculation on the IOS GPU, and is already adopted by the Baidu APP.
size:340k+ (on ARM v7)Speed:40ms (for IOS Metal GPU mobilenet) or MS (for Squeezenet)Baidu Research and development of the mobile end of the
Deep convolutional neural networks have been a great success in the field of image, speech, and NLP, and from the perspective of learning and sharing, this article has compiled the latest resources on CNN related since 2013, including important papers, books, video tutorials, Tutorial, theories, model libraries, and development libraries. At the end of the text is attached to the resource address.
Importan
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