I am trying to evaluate a multiple linear regression model. I have a data set like this :

enter image description here

This data set has 157 rows * 54 columns.

I need to predict ground_truth value from articles. I will add my multiple linear model 7 articles between en_Amantadine with en_Common.

I have code for multiple linear regression :

from sklearn.linear_model import LinearRegression
X = [[6, 2], [8, 1], [10, 0], [14, 2], [18, 0]] // need to modify for my problem
y = [[7],[9],[13],[17.5], [18]] // need to modify
model = LinearRegression()
model.fit(X, y)

My problem is, I cannot extract data from my DataFrame for X and y variables. In my code X should be:

X = [[4984, 94, 2837, 857, 356, 1678, 29901],
     [4428, 101, 4245, 906, 477, 2313, 34176],
      ....
     ]
y = [[3.135999], [2.53356] ....]

I cannot convert DataFrame to this type of structure. How can i do this ?

Any help is appreciated.

up vote 9 down vote accepted

You can turn the dataframe into a matrix using the method as_matrix directly on the dataframe object. You might need to specify the columns which you are interested in X=df[['x1','x2','X3']].as_matrix() where the different x's are the column names.

For the y variables you can use y = df['ground_truth'].values to get an array.

Here is an example with some randomly generated data:

import numpy as np
#create a 5X5 dataframe
df = pd.DataFrame(np.random.random_integers(0, 100, (5, 5)), columns = ['X1','X2','X3','X4','y'])

calling as_matrix() on df returns a numpy.ndarray object

X = df[['X1','X2','X3','X4']].as_matrix()

Calling values returns a numpy.ndarray from a pandas series

y =df['y'].values

Notice: You might get a warning saying:FutureWarning: Method .as_matrix will be removed in a future version. Use .values instead.

To fix it use values instead of as_matrix as shown below

X = df[['X1','X2','X3','X4']].values
  • I editted my question, it seems there is a problem. Could please help on this ? – Batuhan Bardak Feb 5 '15 at 1:00
  • Ups, it's my fault everything works fine. Thanks for help – Batuhan Bardak Feb 5 '15 at 1:09
  • If you want to get only one column and you know the column. You can use it like this -> Y = df['column_name'].as_matrix() – Karthik N G Dec 28 '16 at 16:27
  • As of pandas 0.23, as_matrix() has been deprecated, and values should work both on Series and DataFrame. – user121664 Jul 31 at 14:50
y = broken_df.ground_truth.values
X = broken_df.drop('ground_truth', axis=1).values
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.3, random_state=42)
linreg = LinearRegression()
linreg.fit(X_train, y_train)
y_pred = linreg.predict(X_test)
print(linreg.score(X_test, y_test)
print(classification_report(y_test, y_pred))
  • there is no reference to a DataFrame in your answer. – javadba Mar 10 at 18:50

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