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Practical Guide to Applied Conformal Prediction in Python

You're reading from  Practical Guide to Applied Conformal Prediction in Python

Product type Book
Published in Dec 2023
Publisher Packt
ISBN-13 9781805122760
Pages 240 pages
Edition 1st Edition
Languages
Author (1):
Valery Manokhin Valery Manokhin
Profile icon Valery Manokhin
Toc

Table of Contents (19) Chapters close

Preface 1. Part 1: Introduction
2. Chapter 1: Introducing Conformal Prediction 3. Chapter 2: Overview of Conformal Prediction 4. Part 2: Conformal Prediction Framework
5. Chapter 3: Fundamentals of Conformal Prediction 6. Chapter 4: Validity and Efficiency of Conformal Prediction 7. Chapter 5: Types of Conformal Predictors 8. Part 3: Applications of Conformal Prediction
9. Chapter 6: Conformal Prediction for Classification 10. Chapter 7: Conformal Prediction for Regression 11. Chapter 8: Conformal Prediction for Time Series and Forecasting 12. Chapter 9: Conformal Prediction for Computer Vision 13. Chapter 10: Conformal Prediction for Natural Language Processing 14. Part 4: Advanced Topics
15. Chapter 11: Handling Imbalanced Data 16. Chapter 12: Multi-Class Conformal Prediction 17. Index 18. Other Books You May Enjoy

How conformal prediction differs from traditional machine learning

Conformal prediction allows the production of well-calibrated probabilistic predictions for any statistical, machine learning, or deep learning model. This is achieved without relying on restrictive assumptions required by other methods such as Bayesian techniques, Monte Carlo simulation, and bootstrapping. Importantly, conformal prediction does not require subjective priors. It provides mathematically guaranteed, well-calibrated predictions every time – regardless of the underlying prediction model, data distribution, or dataset size.

A key limitation of traditional machine learning is the need for more reasonable confidence measures for individual predictions. Models may have excellent overall performance but not be able to quantify uncertainty for a given input reliably.

Conformal prediction solves this by outputting prediction regions and confidence measures with statistical validity guarantees. It...

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