Last updated: 2019-07-10

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Knit directory: 2019-feature-selection/

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Correlation of filter methods

Spearman’s rank correlation is used because rankings are compared.

VI

Filter methods amongst each other

Version Author Date
869c409 pat-s 2019-07-02
09f6292 pat-s 2019-06-30

Number of bins of FSelectorRcpp::information.gain()

Version Author Date
09f6292 pat-s 2019-06-30

NRI

Version Author Date
869c409 pat-s 2019-07-02

HR

Version Author Date
869c409 pat-s 2019-07-02
09f6292 pat-s 2019-06-30

R version 3.5.2 (2018-12-20)
Platform: x86_64-pc-linux-gnu (64-bit)
Running under: CentOS Linux 7 (Core)

Matrix products: default
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attached base packages:
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