Lojistik Regresyon Modelleri

Tidyverse ile Machine Learning

Dmitriy (Dima) Gorenshteyn

Lead Data Scientist, Memorial Sloan Kettering Cancer Center

İkili Sınıflandırma

Tidyverse ile Machine Learning

attrition Veri Kümesi

Tidyverse ile Machine Learning

Lojistik Regresyon

glm(formula = ___, data = ___, family = "binomial")
Tidyverse ile Machine Learning

glm()

head(cv_data)
# A tibble: 5 x 4
  splits       id    train                   validate               
* <list>       <chr> <list>                  <list>                 
1 <S3: rsplit> Fold1 <data.frame [882 × 31]> <data.frame [221 × 31]>
2 <S3: rsplit> Fold2 <data.frame [882 × 31]> <data.frame [221 × 31]>
3 <S3: rsplit> Fold3 <data.frame [882 × 31]> <data.frame [221 × 31]>
4 <S3: rsplit> Fold4 <data.frame [883 × 31]> <data.frame [220 × 31]>
5 <S3: rsplit> Fold5 <data.frame [883 × 31]> <data.frame [220 × 31]>
cv_models_lr <- cv_data %>% 
  mutate(model = map(train, ~glm(formula = Attrition~., 
                                 data = .x, family = "binomial")))
Tidyverse ile Machine Learning

Uygulama Zamanı

Tidyverse ile Machine Learning

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