Ensemble Machine Learning in Python: Random Forest, AdaBoost
4.6 (670 ratings)
Course Ratings are calculated from individual students’ ratings and a variety of other signals, like age of rating and reliability, to ensure that they reflect course quality fairly and accurately.
7,825 students enrolled

Ensemble Machine Learning in Python: Random Forest, AdaBoost

Ensemble Methods: Boosting, Bagging, Boostrap, and Statistical Machine Learning for Data Science in Python
4.6 (670 ratings)
Course Ratings are calculated from individual students’ ratings and a variety of other signals, like age of rating and reliability, to ensure that they reflect course quality fairly and accurately.
7,825 students enrolled
Last updated 10/2018
English
English [Auto-generated]
Current price: $10.99 Original price: $119.99 Discount: 91% off
30-Day Money-Back Guarantee
This course includes
  • 5.5 hours on-demand video
  • Full lifetime access
  • Access on mobile and TV
  • Certificate of Completion
Training 5 or more people?

Get your team access to Udemy's top 3,000+ courses anytime, anywhere.

Try Udemy for Business
What you'll learn
  • Understand and derive the bias-variance decomposition
  • Understand the bootstrap method and its application to bagging

  • Understand why bagging improves classification and regression performance

  • Understand and implement Random Forest
  • Understand and implement AdaBoost
Requirements
  • Differential calculus
  • Numpy, Matplotlib, Sci-Kit Learn
  • K-Nearest Neighbors, Decision Trees
  • Probability and Statistics (undergraduate level)
  • Linear Regression, Logistic Regresion
Description

In recent years, we've seen a resurgence in AI, or artificial intelligence, and machine learning.

Machine learning has led to some amazing results, like being able to analyze medical images and predict diseases on-par with human experts.

Google's AlphaGo program was able to beat a world champion in the strategy game go using deep reinforcement learning.

Machine learning is even being used to program self driving cars, which is going to change the automotive industry forever. Imagine a world with drastically reduced car accidents, simply by removing the element of human error.

Google famously announced that they are now "machine learning first", and companies like NVIDIA and Amazon have followed suit, and this is what's going to drive innovation in the coming years.

Machine learning is embedded into all sorts of different products, and it's used in many industries, like finance, online advertising, medicine, and robotics.

It is a widely applicable tool that will benefit you no matter what industry you're in, and it will also open up a ton of career opportunities once you get good.

Machine learning also raises some philosophical questions. Are we building a machine that can think? What does it mean to be conscious? Will computers one day take over the world?

This course is all about ensemble methods.

We've already learned some classic machine learning models like k-nearest neighbor and decision tree. We've studied their limitations and drawbacks.

But what if we could combine these models to eliminate those limitations and produce a much more powerful classifier or regressor?

In this course you'll study ways to combine models like decision trees and logistic regression to build models that can reach much higher accuracies than the base models they are made of.

In particular, we will study the Random Forest and AdaBoost algorithms in detail.

To motivate our discussion, we will learn about an important topic in statistical learning, the bias-variance trade-off. We will then study the bootstrap technique and bagging as methods for reducing both bias and variance simultaneously.

We'll do plenty of experiments and use these algorithms on real datasets so you can see first-hand how powerful they are.

Since deep learning is so popular these days, we will study some interesting commonalities between random forests, AdaBoost, and deep learning neural networks.

All the materials for this course are FREE. You can download and install Python, Numpy, and Scipy with simple commands on Windows, Linux, or Mac.

This course focuses on "how to build and understand", not just "how to use". Anyone can learn to use an API in 15 minutes after reading some documentation. It's not about "remembering facts", it's about "seeing for yourself" via experimentation. It will teach you how to visualize what's happening in the model internally. If you want morethan just a superficial look at machine learning models, this course is for you.


HARD PREREQUISITES / KNOWLEDGE YOU ARE ASSUMED TO HAVE:

  • Calculus

  • Probability

  • Object-oriented programming

  • Python coding: if/else, loops, lists, dicts, sets

  • Numpy coding: matrix and vector operations

  • Linear regression, logistic regression, decision trees, kNN


TIPS (for getting through the course):

  • Watch it at 2x.

  • Take handwritten notes. This will drastically increase your ability to retain the information.

  • Write down the equations. If you don't, I guarantee it will just look like gibberish.

  • Ask lots of questions on the discussion board. The more the better!

  • Realize that most exercises will take you days or weeks to complete.

  • Write code yourself, don't just sit there and look at my code.


WHAT ORDER SHOULD I TAKE YOUR COURSES IN?:

  • Check out the lecture "What order should I take your courses in?" (available in the Appendix of any of my courses, including the free Numpy course)


Who this course is for:
  • Understand the types of models that win machine learning contests (Netflix prize, Kaggle)
  • Students studying machine learning
  • Professionals who want to apply data science and machine learning to their work
  • Entrepreneurs who want to apply data science and machine learning to optimize their business
  • Students in computer science who want to learn more about data science and machine learning
  • Those who know some basic machine learning models but want to know how today's most powerful models (Random Forest, AdaBoost, and other ensemble methods) are built
Course content
Expand all 42 lectures 05:16:08
+ Bias-Variance Trade-Off
6 lectures 42:23
Bias-Variance Key Terms
06:37
Bias-Variance Trade-Off
03:09
Bias-Variance Decomposition
03:32
Polynomial Regression Demo
18:07
K-Nearest Neighbor and Decision Tree Demo
06:32
Cross-Validation as a Method for Optimizing Model Complexity
04:26
+ Bootstrap Estimates and Bagging
6 lectures 37:43
Bootstrap Estimation
09:55
Bootstrap Demo
05:20
Bagging
02:36
Bagging Regression Trees
07:19
Bagging Classification Trees
08:39
Stacking
03:54
+ Random Forest
6 lectures 31:32
Random Forest Algorithm
08:54
Random Forest Regressor
07:05
Random Forest Classifier
04:56
Random Forest vs Bagging Trees
03:47
Implementing a "Not as Random" Forest
04:12
Connection to Deep Learning: Dropout
02:38
+ AdaBoost
7 lectures 36:52
AdaBoost Algorithm
07:09
Additive Modeling
01:50
AdaBoost Loss Function: Exponential Loss
07:15
AdaBoost Implementation
08:26
Comparison to Stacking
03:29
Connection to Deep Learning
03:48
Summary and What's Next
04:55
+ Appendix
13 lectures 02:35:28
What is the Appendix?
02:48
Confidence Intervals
10:11
Windows-Focused Environment Setup 2018
20:20
How to install Numpy, Scipy, Matplotlib, Pandas, IPython, Theano, and TensorFlow
17:32
How to Code by Yourself (part 1)
15:54
How to Code by Yourself (part 2)
09:23
How to Succeed in this Course (Long Version)
10:24
Is this for Beginners or Experts? Academic or Practical? Fast or slow-paced?
22:04
Proof that using Jupyter Notebook is the same as not using it
12:29
BONUS: Where to get Udemy coupons and FREE deep learning material
02:20
Python 2 vs Python 3
04:38
What order should I take your courses in? (part 1)
11:18
What order should I take your courses in? (part 2)
16:07