• 设为首页
  • 点击收藏
  • 手机版
    手机扫一扫访问
    迪恩网络手机版
  • 关注官方公众号
    微信扫一扫关注
    公众号

snrazavi/Machine_Learning_2018: Codes and Project for Machine Learning Course, F ...

原作者: [db:作者] 来自: 网络 收藏 邀请

开源软件名称(OpenSource Name):

snrazavi/Machine_Learning_2018

开源软件地址(OpenSource Url):

https://github.com/snrazavi/Machine_Learning_2018

开源编程语言(OpenSource Language):

Jupyter Notebook 99.9%

开源软件介绍(OpenSource Introduction):

Machine Learning Course (Fall 2018)

Codes and Projects for Machine Learning Course, University of Tabriz.

Contents:

Chapter 1: Introduction (video)

  • download slides in Persian (pdf)

Supervised Learning

Chapter 2: Regression

  • Linear regression
  • Gradient descent algorithm (video)
  • Multi-variable linear regression
  • Polynomial regression (video)
  • Normal equation
  • Locally weighted regression
  • Probabilistic interpretation (video)
  • Download slides in Persian (pdf)

Chapter 3: Python and NumPy

  • Python basics
  • Creating vectors and matrices in numpy
  • Reading and writing data from/to files
  • Matrix operations (video)
  • Colon (:) operator
  • Plotting using matplotlib (video)
  • Control structures in python
  • Implementing linear regression cost function (video)

Chapter 4: Logistic Regression (video)

  • Classification and logistic regression
  • Probabilistic interpretation
  • Logistic regression cost function
  • Logistic regression and gradient descent
  • Multi-class logistic regression
  • Advanced optimization methods
  • Download slides in Persian (pdf)

Furthur Reading

Chapter 5: Regularization (video)

  • Overfitting and Regularization
  • L2-Regularization (Ridge)
  • L1-Regularization (Lasso)
  • Regression with regularization
  • Classification with regularization
  • Download slides in Persian (pdf)

Furthur Reading

Chapter 6: Neural Networks (video)

  • Milti-class logistic regression
  • Softmax classifier
  • Training softmax classifier
  • Geometric interpretation
  • Non-linear classification
  • Neural Networks (video: part 2)
  • Training neural networks: Backpropagation
  • Training neural networks: advanced optimization methods (video: part 3)
  • Gradient checking
  • Mini-batch gradient descent
  • Download slides in Persian (pdf)

Demo:

Related Videos:

Free Online Books:

Chapter 7: Support Vector Machines

  • Motivation: optimal decision boundary (video: part 1)
  • Support vectors and margin
  • Objective function formulation: primal and dual
  • Non-linear classification: soft margin (video: part 2)
  • Non-linear classification: kernel trick
  • Multi-class SVM
  • Download slides in persian (pdf)

Demo:

Furthur Reading

Unsupervided Learning

Chapter 8: Clustering (video)

  • Supervised vs unsupervised learning
  • Clustering
  • K-Means clustering algorithm (demo)
  • Determining number of clusters: Elbow method
  • Postprocessing methods: Merge and Split clusters
  • Bisectioning clustering
  • Hierarchical clustering
  • Application 1: Clustering digits
  • Application 2: Image Compression
  • Download slides in Persian (pdf)

Chapter 9: Dimensionality Reduction and PCA (video)

  • Introduction to PCA
  • PCA implementation in python
  • PCA Applications
  • Singular Value Decomposition (SVD)
  • Downloas slides in Persian (pdf)

Chapter 10: Anomally Detection (video: Part 1, Part 2)

  • Intoduction to anomaly detection
  • Some applications (security, manufacturing, fraud detection)
  • Anoamly detection using probabilitic modelling
  • Uni-variate normal distribution for anomaly detection
  • Multi-variate normal distribution for anomaly detection
  • Evaluation measures (TP, FP, TN, FN, Precision, Recall, F-score)
  • Anomaly detection as one-class classification
  • Classification vs anomaly detection
  • Download slides in Persian (pdf)

Chapter 11: Recommender Systems (video)

  • Introduction to recommender systems
  • Collaborative filtering approach
  • User-based collaborative filtering
  • Item-based collaborative filtering
  • Similarity measures (Pearson, Cosine, Euclidian)
  • Cold start problem
  • Singular value decomposition
  • Content-based recommendation
  • Cost function and minimization
  • Download slides in Persian (pdf)

Other Useful Resources

Assignments:

  1. Regression and Gradient Descent
  2. Classification, Logistic Regression and Regularization
  3. Multi-Class Logistic Regression
  4. Neural Networks Training
  5. Neural Networks Implementing
  6. Clustering
  7. Dimensionallity Reduction and PCA
  8. Recommender Systems



鲜花

握手

雷人

路过

鸡蛋
该文章已有0人参与评论

请发表评论

全部评论

专题导读
热门推荐
阅读排行榜

扫描微信二维码

查看手机版网站

随时了解更新最新资讯

139-2527-9053

在线客服(服务时间 9:00~18:00)

在线QQ客服
地址:深圳市南山区西丽大学城创智工业园
电邮:jeky_zhao#qq.com
移动电话:139-2527-9053

Powered by 互联科技 X3.4© 2001-2213 极客世界.|Sitemap