import pandas as pd
from sklearn.datasets import make_classification
from imblearn.under_sampling import RandomUnderSampler
Gerando uma data set aleatório para teste - 30% da classe 0, 70% da classe 1
x, y = make_classification(n_features=5, n_samples=15, weights=[0.3, 0.7])
Fazendo o undersampling
rus = RandomUnderSampler(random_state=42)
under_x, under_y = rus.fit_resample(x, y)
Criando nomes para as features no dataframe
nome_coluna = [f'fetaure_{a}' for a in range(5)]
nome_y = ['target']
Voce tem 2 arrays numpy, precisa converter
under_x = pd.DataFrame(under_x, columns=nome_coluna)
under_y = pd.DataFrame(under_y, columns=nome_y)
Concatenando os dataframes
df = pd.concat([under_x, under_y], axis=1)
df
|
fetaure_0 |
fetaure_1 |
fetaure_2 |
fetaure_3 |
fetaure_4 |
target |
0 |
-0.832487 |
0.101922 |
-0.063718 |
-0.271529 |
-0.493319 |
0 |
1 |
-1.795138 |
0.269398 |
-0.103635 |
0.439472 |
-0.985433 |
0 |
2 |
-1.588549 |
0.452757 |
0.054160 |
-0.279992 |
-0.533582 |
0 |
3 |
-0.599718 |
0.513594 |
0.253624 |
1.966745 |
0.339578 |
0 |
4 |
-0.166711 |
-0.282595 |
-0.218949 |
-1.717649 |
-0.577190 |
0 |
5 |
0.708866 |
0.290095 |
0.310717 |
0.030758 |
1.015103 |
1 |
6 |
0.283073 |
0.394922 |
0.313986 |
-0.810678 |
0.845986 |
1 |
7 |
-0.192897 |
0.187109 |
0.096489 |
-0.332368 |
0.143822 |
1 |
8 |
2.281291 |
-1.580715 |
-0.710976 |
-0.135707 |
-0.702879 |
1 |
9 |
1.499596 |
-0.995987 |
-0.438036 |
1.399350 |
-0.394004 |
1 |