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- Feature Selection in R -- Removing Extraneous Features
- Removing closely correlated features
- Removing features with high numbers of NA
- Removing features with zero or near-zero variance
- Formula
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- Variables
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- Writing functions in R
- xgboost

R Language
Feature Selection in R -- Removing Extraneous Features

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Contributors: 1
Thursday, October 20, 2016

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