Package deal
machine learning course
stanford machine learning course (half course + summary)
[Show more]stanford machine learning course (half course + summary)
[Show more]Supervised learning 
Linear Regression 
1 LMS algorithm 
 
2 The normal equations 
2.1 Matrix derivatives 
3 Probabilistic interpretation 
and more
Preview 3 out of 28 pages
Add to cartSupervised learning 
Linear Regression 
1 LMS algorithm 
 
2 The normal equations 
2.1 Matrix derivatives 
3 Probabilistic interpretation 
and more
Perception 
Exponential Family Generalized Linear Models 
Soft max Regression Multiclass Classification
Preview 2 out of 8 pages
Add to cartPerception 
Exponential Family Generalized Linear Models 
Soft max Regression Multiclass Classification
Contents 
1 Basic Concepts and Notation 2 
1.1 Basic Notation . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 2 
2 Matrix Multiplication 3 
2.1 Vector-Vector Products . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 3 
2.2 Matrix-Vector Products . . . . . . . . . . . ....
Preview 4 out of 94 pages
Add to cartContents 
1 Basic Concepts and Notation 2 
1.1 Basic Notation . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 2 
2 Matrix Multiplication 3 
2.1 Vector-Vector Products . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 3 
2.2 Matrix-Vector Products . . . . . . . . . . . ....
Outline 
1 Basic Concepts and Notation 
2 Matrix Multiplication 
3 Operations and Properties 
4 Matrix Calculus
Preview 3 out of 29 pages
Add to cartOutline 
1 Basic Concepts and Notation 
2 Matrix Multiplication 
3 Operations and Properties 
4 Matrix Calculus
Generative Learning algorithms 
Gaussian discriminant analysis. 
Naive Bayes. 
Laplace Smoothing.
Preview 2 out of 14 pages
Add to cartGenerative Learning algorithms 
Gaussian discriminant analysis. 
Naive Bayes. 
Laplace Smoothing.
Gaussian discriminant analysis & it is model 
Naive Bayes.
Preview 2 out of 6 pages
Add to cartGaussian discriminant analysis & it is model 
Naive Bayes.
Outline 
Naive Bayes 
Laplacesmoothing 
Event Models 
Kernel Methods
Preview 2 out of 7 pages
Add to cartOutline 
Naive Bayes 
Laplacesmoothing 
Event Models 
Kernel Methods
Probability theory is the study of uncertainty. Through this class, we will be relying on concepts 
from probability theory for deriving machine learning algorithms. These notes attempt to cover the 
basics of probability theory at a level appropriate for CS 229. The mathematical theory of probabili...
Preview 2 out of 12 pages
Add to cartProbability theory is the study of uncertainty. Through this class, we will be relying on concepts 
from probability theory for deriving machine learning algorithms. These notes attempt to cover the 
basics of probability theory at a level appropriate for CS 229. The mathematical theory of probabili...
a multivariate 
normal (or Gaussian) distribution 
1 Relationship to univariate Gaussians 
2 The covariance matrix 
3 The diagonal covariance matrix case 
4 Isocontours 
5 Linear transformation interpretation
Preview 2 out of 10 pages
Add to carta multivariate 
normal (or Gaussian) distribution 
1 Relationship to univariate Gaussians 
2 The covariance matrix 
3 The diagonal covariance matrix case 
4 Isocontours 
5 Linear transformation interpretation
1 Definition 
2 Gaussian facts 
3 Closure properties 
4 Summary 
5 Exercise
Preview 2 out of 11 pages
Add to cart1 Definition 
2 Gaussian facts 
3 Closure properties 
4 Summary 
5 Exercise
Outline 
1 Basics 
2 Random Variables 
3 Expectation-Variance 
4 Joint Distributions 
5 Covariance 
6 RV Conditionals 
7 Random Vectors 
8 Multivariate Gaussian
Preview 4 out of 100 pages
Add to cartOutline 
1 Basics 
2 Random Variables 
3 Expectation-Variance 
4 Joint Distributions 
5 Covariance 
6 RV Conditionals 
7 Random Vectors 
8 Multivariate Gaussian
Preview 3 out of 30 pages
Add to cartPreview 2 out of 8 pages
Add to cartsummary of Kernel Methods 
SVMs
Deep Learning 
Supervised Learning with Non-linear Models 
Neural Networks 
Backpropagation 
Vectorization Over Training Examples
Preview 3 out of 21 pages
Add to cartDeep Learning 
Supervised Learning with Non-linear Models 
Neural Networks 
Backpropagation 
Vectorization Over Training Examples
Deep Learning 
Supervised learning with non linear models 
Logistic Regression 
Neural Networks 
computational power 
data available 
algorithms 
Propagation equation
Preview 2 out of 6 pages
Add to cartDeep Learning 
Supervised learning with non linear models 
Logistic Regression 
Neural Networks 
computational power 
data available 
algorithms 
Propagation equation
Text editor/IDE options.. (don’t settle with notepad) 
• PyCharm (IDE) 
• Visual Studio Code (IDE) 
• Sublime Text (IDE) 
• Atom 
• Notepad ++/gedit 
• Vim (for Linux)
Preview 4 out of 39 pages
Add to cartText editor/IDE options.. (don’t settle with notepad) 
• PyCharm (IDE) 
• Visual Studio Code (IDE) 
• Sublime Text (IDE) 
• Atom 
• Notepad ++/gedit 
• Vim (for Linux)
Stuvia customers have reviewed more than 700,000 summaries. This how you know that you are buying the best documents.
You can quickly pay through credit card or Stuvia-credit for the summaries. There is no membership needed.
Your fellow students write the study notes themselves, which is why the documents are always reliable and up-to-date. This ensures you quickly get to the core!
You get a PDF, available immediately after your purchase. The purchased document is accessible anytime, anywhere and indefinitely through your profile.
Our satisfaction guarantee ensures that you always find a study document that suits you well. You fill out a form, and our customer service team takes care of the rest.
Stuvia is a marketplace, so you are not buying this document from us, but from seller faisalsardar1. Stuvia facilitates payment to the seller.
No, you only buy these notes for $25.49. You're not tied to anything after your purchase.
4.6 stars on Google & Trustpilot (+1000 reviews)
78998 documents were sold in the last 30 days
Founded in 2010, the go-to place to buy study notes for 14 years now