INTRODUCTION TO STATISTICAL LEARNING
21st Edition
ISBN: 9781071614174
Author: James
Publisher: SPRINGER
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Chapter 3, Problem 2E
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Difference between K-nearest neighbours (KNN) classifier and regression methods
KNN classifier | KNN regression |
It is typically used to solve classification problems. | It is used to solve regression problems. |
It solves the problem by identifying the neighbours and then estimating conditional probability... |
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INTRODUCTION TO STATISTICAL LEARNING
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