In this Advanced Machine Learning with scikit-learn training course, expert author Andreas Mueller will teach you how to choose and evaluate machine learning models. This course is designed for users that already have experience with Python.
You will start by learning about model complexity, overfitting and underfitting. From there, Andreas will teach you about pipelines, advanced metrics and imbalanced classes, and model selection …
Advanced Machine Learning with scikit-learn
Video description
In this Advanced Machine Learning with scikit-learn training course, expert author Andreas Mueller will teach you how to choose and evaluate machine learning models. This course is designed for users that already have experience with Python.
You will start by learning about model complexity, overfitting and underfitting. From there, Andreas will teach you about pipelines, advanced metrics and imbalanced classes, and model selection for unsupervised learning. This video tutorial also covers dealing with categorical variables, dictionaries, and incomplete data, and how to handle text data. Finally, you will learn about out of core learning, including the sci-learn interface for out of core learning and kernel approximations for large-scale non-linear classification.
Once you have completed this computer based training course, you will have learned everything you need to know to be able to choose and evaluate machine learning models. Working files are included, allowing you to follow along with the author throughout the lessons.
What Is Model Complexity And Overfitting?
00:02:58
Linear Models In-Depth
00:11:06
Kernel SVMs In-Depth
00:07:40
Random Forests In-Depth
00:06:02
Learning Curves For Analyzing Model Complexity
00:03:54
Validation Curves For Analyzing Model Parameters
00:02:30
Efficient Parameter Search With EstimatorCV Objects
00:05:13
Pipelines
Motivation Of Using Pipelines
00:03:09
Defining A Pipeline And Basic Usage
00:06:30
Cross-Validation With Pipelines
00:02:32
Parameter Selection With Pipelines
00:04:37
Advanced Metrics And Imbalanced Classes
Be Mindful Of Default Metrics
00:07:04
More Evaluation Methods For Classification
00:05:17
AUC
00:06:45
Defining Custom Metrics
00:05:39
Model Selection For Unsupervised Learning
Guidelines For Unsupervised Model Selection
00:06:52
Model Selection For Density Models
00:05:53
Model Selection For Clustering
00:04:44
Dealing With Categorical Variables, Dictionaries, And Incomplete Data
Why Real Data Is Messy
00:06:24
One-Hot Encoding For Categorical Data
00:06:24
Working With Dictionaries
00:02:01
Handling Incomplete Data
00:04:15
Handling Text Data
Motivation
00:02:51
Bag-Of-Words Representations
00:06:48
Text Classification For Sentiment Analysis - Part 1
00:07:25
Text Classification For Sentiment Analysis - Part 2
00:04:01
The Hashing Trick
00:03:25
Other Representations - Distributed Word Representations
00:02:38
Out Of Core Learning
The Trade-Offs Of Out Of Core Learning
00:04:43
The scikit-Learn Interface For Out Of Core Learning
00:05:13
Kernel Approximations For Large-Scale Non-Linear Classification
00:05:06
Subsample And Transform - Supervised Transformations For Out Of Core Learning
00:05:35
Application - Out-Of-Core Text Classification
00:04:58
Conclusion
Summary
00:03:29
Where To Go From Here
00:03:26
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