1

I have the following data below. Notice the Age has Nan. My goal is to impute all columns properly.

+----+-------------+----------+--------+------+-------+-------+---------+
| ID | PassengerId | Survived | Pclass | Age  | SibSp | Parch |  Fare   |
+----+-------------+----------+--------+------+-------+-------+---------+
|  0 |           1 |        0 |      3 | 22.0 |     1 |     0 | 7.2500  |
|  1 |           2 |        1 |      1 | 38.0 |     1 |     0 | 71.2833 |
|  2 |           3 |        1 |      3 | 26.0 |     0 |     0 | 7.9250  |
|  3 |           4 |        1 |      1 | 35.0 |     1 |     0 | 53.1000 |
|  4 |           5 |        0 |      3 | 35.0 |     0 |     0 | 8.0500  |
|  5 |           6 |        0 |      3 | NaN  |     0 |     0 | 8.4583  |
+----+-------------+----------+--------+------+-------+-------+---------+

I have a working code that imputes all columns. The results are below. The results looks problematic.

+----+-------------+----------+--------+-----------+-------+-------+---------+
| ID | PassengerId | Survived | Pclass |    Age    | SibSp | Parch |  Fare   |
+----+-------------+----------+--------+-----------+-------+-------+---------+
|  0 | 1.0         | 0.0      | 3.0    | 22.000000 | 1.0   | 0.0   | 7.2500  |
|  1 | 2.0         | 1.0      | 1.0    | 38.000000 | 1.0   | 0.0   | 71.2833 |
|  2 | 3.0         | 1.0      | 3.0    | 26.000000 | 0.0   | 0.0   | 7.9250  |
|  3 | 4.0         | 1.0      | 1.0    | 35.000000 | 1.0   | 0.0   | 53.1000 |
|  4 | 5.0         | 0.0      | 3.0    | 35.000000 | 0.0   | 0.0   | 8.0500  |
|  5 | 6.0         | 0.0      | 3.0    | 2.909717  | 0.0   | 0.0   | 8.4583  |
+----+-------------+----------+--------+-----------+-------+-------+---------+

My code is below:

import pandas as pd
import numpy as np

#https://www.kaggle.com/shivamp629/traincsv/downloads/traincsv.zip/1
data = pd.read_csv("train.csv")

data2 = data[['PassengerId', 'Survived','Pclass','Age','SibSp','Parch','Fare']].copy()

from sklearn.preprocessing import Imputer

fill_NaN = Imputer(missing_values=np.nan, strategy='mean', axis=1)
data2_im = pd.DataFrame(fill_NaN.fit_transform(data2), columns = data2.columns)

data2_im

It's weird the age is 2.909717. Is there a proper way to do simple mean imputation. I am okay doing column by column but I am not clear with syntax/approach. Thanks for any help.

1

The root of your problem is this line:

fill_NaN = Imputer(missing_values=np.nan, strategy='mean', axis=1)

, which means you're averaging over rows (oranges and apples).

Try changing it to:

fill_NaN = Imputer(missing_values=np.nan, strategy='mean', axis=0) # axis=0

and you will have the expected behaviour.

strategy='median' could be even better, as it's robust against outliers:

fill_NaN = Imputer(missing_values=np.nan, strategy='median', axis=0)
  • thanks for the comprehensive help. You are correct arithmetic mean is not good. – Earl Mar 12 at 7:42
1

The problem is that you use the wrong axis. The correct code should be:

fill_NaN = Imputer(missing_values=np.nan, strategy='mean', axis=0)

Note the axis=0.

1

Try like

fill_NaN = Imputer(missing_values=np.nan, strategy='mean', axis=0)

or

data2.fillna(data2.mean())

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.