EVRI-thing You Need to Know About Cross-Validation
Aug 20, 2020
Cross-validation is a ubiquitous but often mis-used machine learning procedure. Eigenvector’s Barry M. Wise takes an in-depth review of this important methodology for establishing model meta-parameters and estimating predictive performance.
Table of Contents
00:00 – Introduction and Outline
02:40 – Basics of Cross Validation
11:20 – Ways to Split the Data
26:42 – Things to Consider when Choosing a CV Method
44:35 – Setting up custom CV
53:42 – Cross Validation in PCA
55:32 – How to Make Cross-validation go Bad
1:00:22 – Variations and Related Methods
1:01:54 – Conclusions
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