Skip to content

saudbasant/Machine-Learning-Coursera

 
 

Repository files navigation

Machine-Learning-Coursera

Machine Learning - Stanford University.

Taught by Prof. Andrew Ng.

Verified Certificate

Syllabus:

Week 1: Introduction

[Slides 1-3] [Lecture Notes]

  • Supervised/Unsupervised Learning
  • Linear Regression with One Variable
  • Gradient Descent for Linear Regression
  • Linear Algebra Review

Week 2: Linear Regression with Multiple Variables

[Slides 4-5] [Lecture Notes] [Assignment]

  • Multivariate Linear Regression
  • Normal Equation
  • Octave/Matlab basic tutorial

Week 3: Logistic Regression

[Slides 6-7] [Lecture Notes] [Assignment]

  • Classification
  • Logistic Regression Model
  • Multiclass Classification
  • Overfitting
  • Regularization

Week 4: Neural Network Representation

[Slides 8] [Lecture Notes] [Assignment]

  • Model Representation
  • Multiclass Classification

Week 5: Neural Network Learning

[Slides 9] [Lecture Notes] [Assignment]

  • Foward Propagation
  • Backward Propagation
  • Gradient Checking
  • Random Initalization

Week 6: Aviced for Applying Machine Learning

[Slides 10-11] [Lecture Notes] [Assignment]

  • Evaluating a hypothesis
  • Bias vs Variance
  • Regularization
  • Error Analysis
  • Handling Skewed Data
  • Spam Classifier

Week 7: Support Vector Machine

[Slides 12] [Lecture Notes] [Assignment]

  • Large Margin Classification with SVM
  • Kernels

Week 8: Unsupervised Learning

[Slides 13-14] [Lecture Notes] [Assignment]

  • Clustering: K-means Algorithms
  • Dimensionality Reduction: Principal Component Analysis (PCA)

Week 9: Anomaly Detection

[Slides 15-16] [Lecture Notes] [Assignment]

  • Density Estimation
  • Anomaly Detection
  • Recommender System

Week 10: Large Scale Machine Learning

[Slides 17] [Lecture Notes]

  • Stochastic Gradient Descent
  • Mini-batch Gradient Descent
  • Online Learning

Week 11: Photo OCR

[Slides 18]

  • Sliding Window
  • Machine Learning pipeline

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors

Languages

  • MATLAB 100.0%