Machine-Learning-for-Regression
Machine-Learning-for-Regression copied to clipboard
Interactive courseware module that introduces typical workflow, setup, and considerations involved in solving regression problems with machine learning.
Machine Learning for Regression
Curriculum Module
Created with R2021a. Compatible with R2021a and later releases.
Information
This curriculum module contains interactive MATLAB® live scripts that teach the basics of machine learning for regression.
Background
You can use these live scripts as demonstrations in lectures, class activities, or interactive assignments outside class. This module covers the difference between regression, classification, and clustering, as well as feature engineering and feature extraction, overfitting and underfitting, and a variety of machine learning models commonly used for regression. It also includes a detailed example of applying regression models for electricity load forecasting using real-world data.
The instructions inside the live scripts will guide you through the exercises and activities. Get started with each live script by running it one section at a time. To stop running the script or a section midway (for example, when an animation is in progress), use the
Stop button in the RUN section of the Live Editor tab in the MATLAB Toolstrip.
Contact Us
Solutions are available upon instructor request. Contact the MathWorks teaching resources team if you would like to request solutions, provide feedback, or if you have a question.
Prerequisites
This module does not assume any prior exposure to the subject of machine learning.
Getting Started
Accessing the Module
On MATLAB Online:
Use the
link to download the module. You will be prompted to log in or create a MathWorks account. The project will be loaded, and you will see an app with several navigation options to get you started.
On Desktop:
Download or clone this repository. Open MATLAB, navigate to the folder containing these scripts and double-click on MLforRegression.prj. It will add the appropriate files to your MATLAB path and open an app that asks you where you would like to start.
Ensure you have all the required products (listed below) installed. If you need to include a product, add it using the Add-On Explorer. To install an add-on, go to the Home tab and select
Add-Ons > Get Add-Ons.
Products
MATLAB® is used throughout. Tools from Statistics and Machine Learning Toolbox™ are used frequently as well.
Scripts
If you are viewing this in a version of MATLAB prior to R2023b, you can view the learning outcomes for each script here
MachineLearningIntro.mlx
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In this script, students will... - Learn the difference between regression, classification, and clustering - Define feature engineering/extraction - Identify and use different machine learning models commonly used for regression - Be able to explain overfitting and underfitting |
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LoadForecastRegression.mlx
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In this script, students will... - Apply the machine learning workflow to solve a problem in time series forecasting - Engineer appropriate features to solve the forecasting problem - Validate and compare different types of regression models - Test and evaluate the trained model to make predictions |
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FE1_ProgrammaticML.mlx and FE2_LoadForecastDL.mlx
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In these scripts, students will... - Expand on the practical problem presented in LoadForecastRegression.mlx - Define feature engineering/extraction - Identify and use different machine learning models commonly used for regression - Be able to explain overfitting and underfitting |
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Related Courseware Modules
Regression Basics
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Available on:![]() GitHub |
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Machine Learning Methods: Clustering
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Available on:![]() GitHub |
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Or feel free to explore our other modular courseware content.
Educator Resources
Contribute
Looking for more? Find an issue? Have a suggestion? Please contact the MathWorks teaching resources team. If you want to contribute directly to this project, you can find information about how to do so in the CONTRIBUTING.md page on GitHub.
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