Transformasi fitur umum

Rekayasa Fitur di R

Jorge Zazueta

Research Professor and Head of the Modeling Group at the School of Economics, UASLP

Dua keluarga transformasi

Box-Cox

  • Mengubah variabel tidak normal agar lebih mendekati normal
  • Keluarga ini mencakup inverse, log, akar kuadrat, dan akar kubik sebagai kasus khusus
  • Hanya untuk nilai yang benar-benar positif

Persamaan transformasi Box-Cox.

Yeo-Johnson

  • Sifat mirip dengan Box-Cox
  • Dapat menangani nilai nol dan negatif
  • Untuk $y$ positif sama dengan Box-Cox dari $y+1$

Persamaan transformasi Yeo-Johnson.

Rekayasa Fitur di R

Dataset loans_num

glimpse(loans_num)
Rows: 480
Columns: 6
$ Loan_Status       <fct> N, Y, Y, Y, Y, Y, N, Y, N, Y, Y, N, Y, Y, N...
$ ApplicantIncome   <dbl> 4583, 3000, 2583, 6000, 5417, 2333, 3036, 4...
$ CoapplicantIncome <dbl> 1508, 0, 2358, 0, 4196, 1516, 2504, 1526, 1...
$ LoanAmount        <dbl> 128, 66, 120, 141, 267, 95, 158, 168, 349, ...
$ Loan_Amount_Term  <dbl> 360, 360, 360, 360, 360, 360, 360, 360, 360...
$ Credit_History    <fct> 1, 1, 1, 1, 1, 1, 0, 1, 1, 1, 1, 1, 1, 1, 0...
Rekayasa Fitur di R

Menerapkan transformasi

Resep dasar

lr_recipe_plain <- # Define recipe
  recipe(Loan_Status ~., data = train)
lr_workflow_plain <- # Bundle workflows
  workflow() %>%
  add_model(lr_model) %>%
  add_recipe(lr_recipe_plain)
lr_fit_plain <- # fit and augment
  lr_workflow_plain %>%
  fit(train)

Evaluasi kinerja

lr_aug_plain %>% # Assess
  class_evaluate(truth = Loan_Status,
                 estimate = .pred_class,
                 .pred_N)
# A tibble: 2 × 3
  .metric  .estimator .estimate
  <chr>    <chr>          <dbl>
1 accuracy binary         0.817
2 roc_auc  binary         0.641
Rekayasa Fitur di R

Menerapkan transformasi

Resep Box-Cox

lr_recipe_BC <- # Define recipe
  recipe(Loan_Status ~., data = train) %>%
  step_BoxCox(all_numeric())
lr_workflow_BC <- # Bundle workflows
  workflow() %>%
  add_model(lr_model) %>%
  add_recipe(lr_recipe_BC)
lr_fit_BC <- # fit and augment
  lr_workflow_BC %>%
  fit(train)

Pesan peringatan

Box-Cox tidak dapat memproses nilai non-positif

Warning messages:
1: Non-positive values in selected
variable. 
2: No Box-Cox transformation could be 
estimated for: `CoapplicantIncome`
Rekayasa Fitur di R

Menerapkan transformasi

Resep Box-Cox (lanjutan)

Sekarang, hapus centang CoappliantIncome untuk menghindari peringatan.

lr_recipe_BC <- # Define recipe
  recipe(Loan_Status ~., data = train) %>%
  step_BoxCox(all_numeric(), 
              -CoapplicantIncome)
lr_workflow_BC <- # Bundle workflows
  workflow() %>%
  add_model(lr_model) %>%
  add_recipe(lr_recipe_BC)
lr_fit_BC <- # fit and augment
  lr_workflow_BC %>%
  fit(train)

Evaluasi kinerja

lr_aug_BC %>% # Assess
  class_evaluate(truth = Loan_Status,
                 estimate = .pred_class,
                 .pred_N)
# A tibble: 2 × 3
  .metric  .estimator .estimate
  <chr>    <chr>          <dbl>
1 accuracy binary         0.817
2 roc_auc  binary         0.599
Rekayasa Fitur di R

Menerapkan transformasi

Resep Yeo-Johnson

lr_recipe_YJ <- # Define recipe
  recipe(Loan_Status ~., data = train) %>%
  step_YeoJohnson(all_numeric())
lr_workflow_YJ <- # Bundle workflows
  workflow() %>%
  add_model(lr_model) %>%
  add_recipe(lr_recipe_YJ)
lr_fit_YJ <- # fit and augment
  lr_workflow_YJ %>%
  fit(train)

Evaluasi kinerja

lr_aug_YJ %>% # Assess
  class_evaluate(truth = Loan_Status,
                 estimate = .pred_class,
                 .pred_N)
# A tibble: 2 × 3
  .metric  .estimator .estimate
  <chr>    <chr>          <dbl>
1 accuracy binary         0.817
2 roc_auc  binary         0.700
Rekayasa Fitur di R

Ayo berlatih!

Rekayasa Fitur di R

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