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Application of deep learning in natural language processing (Version 0.76)

/ * copyright notice: Can be reproduced arbitrarily, please be sure to indicate the original source of the article and author information . */Author: Zhang JunlinTimestamp:2014-10-3This paper summarizes the application methods and techniques of deep learning in natural language processing in the last two years, and the related PPT content, please refer to this link, and the main outline is listed here

The classification algorithm in the eyes of Netflix engineering Director: The lowest priority in deep learning

Original: http://blog.jobbole.com/87148/Editor's note "for an old question on Quora: What are the advantages of different classification algorithms?" Xavier Amatriain, a Netflix engineering director, recently gave a new answer, and in turn recommended the logic regression, SVM, decision tree integration and deep learning based on the principles of the Ames Razor, and talked about his different understanding

The classification algorithm in the eyes of Netflix engineering Director: The lowest priority in deep learning

"Editor's note" for an old question on Quora: What are the advantages of different classification algorithms? Xavier Amatriain, a Netflix engineering director, recently gave a new answer, and in turn recommended the logic regression, SVM, decision tree integration and deep learning based on the principles of the Ames Razor, and talked about his different understandings. He does not recommend

Deep Learning Model: CNN convolution neural Network (i) depth analysis CNN

http://m.blog.csdn.net/blog/wu010555688/24487301This article has compiled a number of online Daniel's blog, detailed explanation of CNN's basic structure and core ideas, welcome to exchange.[1] Deep Learning Introduction[2] Deep Learning training Process[3] Deep

Basic concept of Artificial intelligence _ deep learning

is not fully connected, on the other hand, the weights of the connections between some neurons in the same layer are shared (that is, the same). Its incomplete connection and weight sharing network structure make it more similar to the biological neural network, which reduces the complexity of the network model (which is very important for the deep structure that is difficult to learn), and reduces the number of weights. Think back to the BP neural n

System Learning Deep Learning (39)--ohem

some small numbers of samples, and make the training process more efficient. This method makes use of the significant bootstrapping technique (commonly used in SVM) to modify the SGD algorithm, so that the original region-based convnets heuristic learning and multi-parameters can be removed, and the results are more accurate and stable. The maps in Pascal VOC2007 and 2012 are: 78.9%, 76.3%, respectively.Hard Example Mining: There are 2 main methods o

MIT-2018 new Deep Learning algorithm and its application introductory course resource sharing

Course Description: This is an introductory course on deep learning, and deep learning is mainly used for machine translation, image recognition, games, image generation and more. The course also has two very interesting practical projects: (1) Generate music based on RNN (2) Basic X-ray detection, GitHub address: Http

AI and deep learning

The key of AI is machine learning, machine learning breakthrough is deep learning, artificial neural network.In 1956, in the Dartmouth Conference (Dartmouth conferences), computer scientists first introduced the term "AI", the AI was born, and in subsequent days AI became the "fantasy object" of the lab. Decades later,

(vi) 6.12 neurons Networks from self-taught learning to the deep network

usually used only when there are a large number of annotated training data. In such cases, fine tuning can significantly improve the performance of the classifier. However, if there are a large number of unlabeled datasets (for unsupervised feature learning/pre-training), there are only relatively few annotated training sets, and the effect of fine tuning is very limited.The previously mentioned network is generally three layers, the following is a g

A review of the application of deep learning in the field of health care

In recent years, machine learning, represented by deep learning, has become more and more in the field of health care. According to the type of data processed can be divided into numerical, textual and image data; This paper focuses on text data. Clinical Diagnostic Decisions: (Miotto r,et al;2016) [1] A new unsupervised depth feature

Build a chat robot with deep Learning Network (ii) _ Depth Learning

choose, which requires a high degree of precision in the model. Here, I want to mention the specificity of the dataset and the difference from the real data. For the dataset, the robot model scores different answers each time, and in the training phase some of the answers may only be met once. This means that the robot has a better generalization ability to perform well in the face of many never-seen answers in the test set. However, in many reality systems, robots only need to deal with a limi

Deep Learning Neural Network (Cnn/rnn/gan) algorithm principle + actual combat

The 1th chapter introduces the course of deep learning, mainly introduces the application category of deep learning, the demand of talents and the main algorithms. This paper introduces the course chapters, the course arrangement, the applicable crowd, the prerequisites and the degree to be achieved after the completio

[Deep Learning-03] DQN for Flappybirld

7 mins version:dqn for Flappy Bird Overview This project follows the description of the "Deep Q Learning algorithm described" Playing Atari with deep reinforcement L Earning [2] and shows that this learning algorithm can is further generalized to the notorious Flappy Bird. installation Dependencies: Python 2.7 or 3 Ten

Paper Reading 4:massively Parallel Methods for deep reinforcement learning

Source: ICML Deep learning workshopgoogle DeepMind Innovation point: Building the first large-scale distributed architecture for depth-enhanced learningThe structure consists of four parts: Parallel action: Used to generate new behavior Parallel learner: Used to train from storage experience Distributed neural Networks: used to represent value function or policy Distributed experience S

Deep learning from the beginning

Deep learning has been fire for a long time, some people have been here for many years, and some people have just begun, such as myself. How to get into this field quickly in a short period of time to master deep learning the latest technology is a question worth thinking about. In the present situation, it is the best

Ding! You have a message from Baidu deep learning open course to be viewed.

As a deep learning platform developed by Baidu, paddjavasaddle is easy to learn, easy to use, and flexible and efficient, greatly reducing developers' R D thresholds. To help developers build a fast and Advanced path to deep learning, Baidu opened the "Deep

Evaluation and comparison of deep learning framework

Turn from deep learning public numberThis article is from: InfoQHttp://www.infoq.com/cn/news/2016/01/evaluation-comparison-deep-learnArtificial intelligence is undoubtedly the forefront of the computer world, and deep learning is undoubtedly the focus of artificial intellige

Evaluation and comparison of deep learning framework

Article source:http://www.infoq.com/cn/news/2016/01/evaluation-comparison-deep-learn?utm_campaign=infoq_content Evaluation and comparison of deep learning frameworkArtificial intelligence is undoubtedly the forefront of the computer world, and deep learning is undoubtedly th

28th, a survey of target detection algorithms based on deep learning

In the previous sections, we have covered what is target detection and how to detect targets, as well as the concepts of sliding windows, bounding box, and IOU, non-maxima suppression.Here will summarize the current target detection research results, and several classical target detection algorithms to summarize, this article is based on deep learning target detection, in the following sections, will be spe

Wunda-Deep Learning-Course NOTE-7: Optimization algorithm (Week 2)

algorithm called Rmsprop can also be used to accelerate the mini-batch gradient decline, it is on the basis of MOMENTUAM modified, the formula as shown, DW into the square of the DW, in the fall when more divided by a radical. Can be understood as the vertical direction of the differential term is relatively large, so divided by a larger number, the horizontal direction of the differential term is relatively small, so divided by a relatively small number, so that can eliminate the downward swin

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