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Course Description

Supervised learning is a general term for any machine learning technique that attempts to discover the relationship between a data set and some associated labels for prediction. In regression, the labels are continuous numbers. This course will focus on classification, where the labels are taken from a finite set of numbers or characters. The prototypical and perhaps most well-known example of classification is image recognition. The goal is to take an image (represented by its pixel values) and determine what objects are in the image. Is it a dog? A grapefruit? A stop sign?

There are many practical classification tasks, such as determining whether an individual's financial history makes them high risk for a loan, whether there is a defect in a material based on some sensor readings, or whether a new email is spam or not. These problems share the same basic form and can be solved with many different types of mathematical, statistical, and probabilistic models developed by the machine learning community.

In this course, you will explore several powerful and commonly utilized techniques for supervised learning. You will implement each of these techniques using the free and open-source statistical programming language R with real-world data sets. The focus will be on making these methods accessible for you in your own work.

You are required to have completed the following courses or have equivalent experience before taking this course:

  • Understanding Data Analytics
  • Finding Patterns in Data Using Association Rules, PCA, and Factor Analysis
  • Finding Patterns in Data Using Cluster and Hotspot Analysis
  • Regression Analysis and Discrete Choice Models

Faculty Author

Linda Nozick

Benefits to the Learner

  • Use linear discriminant analysis
  • Build a logit model and an ordered logit model
  • Examine naïve Bayes for classification
  • Examine how to use support vector machines
  • Develop the skills to use all of these techniques in R

Target Audience

  • Current and aspiring data scientists
  • Analysts
  • Engineers
  • Researchers
  • Technical managers

Applies Towards the Following Certificates

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Type
2 week
Dates
Dec 04, 2024 to Dec 17, 2024
Total Number of Hours
20.0
Course Fee(s)
Standard Price $1,199.00
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Feb 12, 2025 to Feb 25, 2025
Total Number of Hours
20.0
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2 week
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Feb 26, 2025 to Mar 11, 2025
Total Number of Hours
20.0
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Standard Price $1,199.00
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Apr 23, 2025 to May 06, 2025
Total Number of Hours
20.0
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Standard Price $1,199.00
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2 week
Dates
Jul 02, 2025 to Jul 15, 2025
Total Number of Hours
20.0
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2 week
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Sep 10, 2025 to Sep 23, 2025
Total Number of Hours
20.0
Course Fee(s)
Standard Price $1,199.00
Type
2 week
Dates
Nov 19, 2025 to Dec 02, 2025
Total Number of Hours
20.0
Course Fee(s)
Standard Price $1,199.00
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