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Bagging and Boosting 

  • Offered byGreat Learning

Bagging and Boosting
 at 
Great Learning 
Overview

Duration

1 hour

Start from

Start Now

Total fee

Free

Mode of learning

Online

Difficulty level

Intermediate

Official Website

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Credential

Certificate

Bagging and Boosting
 at 
Great Learning 
Highlights

  • Earn a certificate of completion
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Bagging and Boosting
 at 
Great Learning 
Course details

What are the course deliverables?
  • Working with Prediction Errors
  • Understanding Ensemble Methods
  • Introduction to Bagging and Boosting
  • Bagging vs Boosting
  • Practical Demo in Python
More about this course
  • In ensemble learning, multiple algorithms are put into play by training them to solve the same problem and this will help us to combine the result and get overall better performance
  • Since machine learning is all about extracting the maximum performance when working on a large amount of data, it becomes very important that you as a learner have a complete understanding of how these concepts work
  • Keeping exactly that in mind, we here at Great Learning have come up with this course on bagging and boosting to help you understand the concepts completely and to give you a solid foundation of the same

Bagging and Boosting
 at 
Great Learning 
Curriculum

Working with Prediction Errors

Understanding Ensemble Methods

Introduction to Bagging

Introduction to Boosting

Bagging vs Boosting

Practical Demo in Python

Bagging and Boosting
 at 
Great Learning 
Admission Process

    Important Dates

    Nov 30, 2024
    Course Commencement Date

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