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Data-Centric Machine Learning with Python

You're reading from  Data-Centric Machine Learning with Python

Product type Book
Published in Feb 2024
Publisher Packt
ISBN-13 9781804618127
Pages 378 pages
Edition 1st Edition
Languages
Authors (3):
Jonas Christensen Jonas Christensen
Profile icon Jonas Christensen
Nakul Bajaj Nakul Bajaj
Profile icon Nakul Bajaj
Manmohan Gosada Manmohan Gosada
Profile icon Manmohan Gosada
View More author details

Table of Contents (17) Chapters

Preface 1. Part 1: What Data-Centric Machine Learning Is and Why We Need It
2. Chapter 1: Exploring Data-Centric Machine Learning 3. Chapter 2: From Model-Centric to Data-Centric – ML’s Evolution 4. Part 2: The Building Blocks of Data-Centric ML
5. Chapter 3: Principles of Data-Centric ML 6. Chapter 4: Data Labeling Is a Collaborative Process 7. Part 3: Technical Approaches to Better Data
8. Chapter 5: Techniques for Data Cleaning 9. Chapter 6: Techniques for Programmatic Labeling in Machine Learning 10. Chapter 7: Using Synthetic Data in Data-Centric Machine Learning 11. Chapter 8: Techniques for Identifying and Removing Bias 12. Chapter 9: Dealing with Edge Cases and Rare Events in Machine Learning 13. Part 4: Getting Started with Data-Centric ML
14. Chapter 10: Kick-Starting Your Journey in Data-Centric Machine Learning 15. Index 16. Other Books You May Enjoy

Summary

In this chapter, we explored the critical aspect of detecting rare events and edge cases in machine learning. Rare events, by their infrequency, hold significant implications across various domains and necessitate special attention. We delved into several techniques and methodologies that equip us to effectively identify and handle these uncommon occurrences.

Statistical methods, such as Z-scores and IQR, provide powerful tools to pinpoint outliers and anomalies in our data. These methods aid in establishing meaningful thresholds for identifying rare events, enabling us to distinguish significant data points from noise.

We also explored machine learning-based anomaly detection techniques, such as isolation forest and autoencoders. These methods leverage unsupervised learning to identify patterns and deviations that diverge from the majority of the data, making them well suited for detecting rare events in complex datasets.

Additionally, we discussed the significance...

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