- Introduction
- Wtf?
- Supervised/ Unsupervised
- Linear regression with one variable
- Model and Cost Function
- Model representation
- Cost function
- Parameter Learning
- Gradient descent
- Gradient descent for linear regression
- Model and Cost Function
- Linear algebra review
- Linear regression with multiple variables
- Multivariate Linear Regression
- Computing Parameters Analytically
- Octav/ Matlab usage
- Logistic Regression
- Classification and Representation
- Logistic Regression Model
- Multiclass Classification
- Regularization
- Solving the Problem of Overfitting
- Motivations
- Neural Networks
- Applications
- Neural Networks: Learning
- Cost Function and Backpropagation
- Backpropagation in Practice
- Application of Neural Networks
- Advice for Applying Machine Learning
- Evaluating a Learning Algorithm
- Bias vs. Variance
- Machine Learning System Design
- Building a Spam Classifier
- Handling Skewed Data
- Using Large Data Sets
- Support Vector Machines
- Large Margin Classification
- Kernels
- SVMs in Practice
- Unsupervised Learning
- Clustering
- Dimensionality Reduction
- Anomaly Detection
- Density Estimation
- Building an Anomaly Detection System
- Multivariate Gaussian Distribution (Optional)
- Recommender Systems
- Predicting Movie Ratings
- Collaborative Filtering
- Low Rank Matrix Factorization
- Gradient descent with large dataset
- Learning with large dataset
- Stochastic gradient descent
- Mini-batch gradient descent
- Stochastic gradient descent convergence
- Advanced topics
- Online learning
- MR
- Photo OCR
- Problem description
- Sliding windows
- Data and artificial data
- Ceiling Analysis
You passed this course! Your grade is 93.30%.