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You're reading from  Machine Learning for Imbalanced Data

Product typeBook
Published inNov 2023
Reading LevelBeginner
PublisherPackt
ISBN-139781801070836
Edition1st Edition
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Authors (2):
Kumar Abhishek
Kumar Abhishek
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Kumar Abhishek

Kumar Abhishek is a seasoned Senior Machine Learning Engineer at Expedia Group, US, specializing in risk analysis and fraud detection for Expedia brands. With over a decade of experience at companies such as Microsoft, Amazon, and a Bay Area startup, Kumar holds an MS in Computer Science from the University of Florida.
Read more about Kumar Abhishek

Dr. Mounir Abdelaziz
Dr. Mounir Abdelaziz
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Dr. Mounir Abdelaziz

Dr. Mounir Abdelaziz is a deep learning researcher specializing in computer vision applications. He holds a Ph.D. in computer science and technology from Central South University, China. During his Ph.D. journey, he developed innovative algorithms to address practical computer vision challenges. He has also authored numerous research articles in the field of few-shot learning for image classification.
Read more about Dr. Mounir Abdelaziz

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Removing examples uniformly

There are two major ways of removing the majority class examples uniformly from the data. The first way is to remove the examples randomly, and the other way involves using clustering techniques. Let’s discuss both of these methods in detail.

Random UnderSampling

The first technique the king might think of is to pick Capulets randomly and remove them from the town. This is a naïve approach. It might work, and the king might be able to bring peace to the town. But the king might cause unforeseen damage by picking up some influential Capulets. However, it is an excellent place to start our discussion. This technique can be considered a close cousin of random oversampling. In Random UnderSampling (RUS), as the name suggests, we randomly extract observations from the majority class until the classes are balanced. This technique inevitably leads to data loss, might harm the underlying structure of the data, and thus performs poorly sometimes...

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Machine Learning for Imbalanced Data
Published in: Nov 2023Publisher: PacktISBN-13: 9781801070836

Authors (2)

author image
Kumar Abhishek

Kumar Abhishek is a seasoned Senior Machine Learning Engineer at Expedia Group, US, specializing in risk analysis and fraud detection for Expedia brands. With over a decade of experience at companies such as Microsoft, Amazon, and a Bay Area startup, Kumar holds an MS in Computer Science from the University of Florida.
Read more about Kumar Abhishek

author image
Dr. Mounir Abdelaziz

Dr. Mounir Abdelaziz is a deep learning researcher specializing in computer vision applications. He holds a Ph.D. in computer science and technology from Central South University, China. During his Ph.D. journey, he developed innovative algorithms to address practical computer vision challenges. He has also authored numerous research articles in the field of few-shot learning for image classification.
Read more about Dr. Mounir Abdelaziz