Deep learning of wheat-machine learning Algorithm Advanced Step
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cp1933-Deep Learning Advanced Algorithm Combat
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This course, as the second stage of the Deep Learning series, introduces the basic concepts, principles, and common algorithms (such as decision trees, support vector machines, neural network algorithms, etc.) of machine learning. The Python language is used as a tool to illustrate each of these algorithms in conjunction with an example. After completing this course, students will understand the common algorithmic principles of machine learning and will use the relevant package in Python to perform data preprocessing, classification, and regression analysis of actual problems. It lays the necessary foundation for the development of machine learning related applications, and also lays the necessary foundation for learning advanced courses in depth learning.
1. Basic Concept Clear version
2. General overview of package installation and environment configuration
3. Environment Configuration Division Detailed
4. Environment Configuration Division under the detailed
5. Handwritten digit recognition
6. Neural network basic structure and gradient descent algorithm
7. Random Gradient descent algorithm
8. The gradient descent algorithm is implemented
9. The gradient descent algorithm realizes
10. Neural network handwritten digital demo
On the 11.Backpropagation algorithm
Under 12.Backpropagation algorithm
13.Backpropagation Algorithm Implementation
14.cross-entropy function
15.Softmax and Overfitting
16.Regulization
17.Regulazition and dropout
18. Normal distribution and initialization (fixed version)
19. Improved version of handwritten digital recognition implementation
20. Neural network parameter Hyper-parameters selection
21. Difficulties in deep neural networks
22. Use Rel to solve vanishinggradient problem
23.ConvolutionNerualNetwork algorithm
24.ConvolutionNeuralNetwork Implementation on
25.ConvolutionNeuralNetwork implementation of
26.Restricted Boltzmann Machine
27.Restricted Boltzmann Machine under
28.Deep Brief Network and Autoencoder
Deep Learning machine Learning algorithm Practical Python Advanced
Deep learning of wheat-machine learning Algorithm Advanced Step