I have the data frame i.e. df. Which has more than 2000 rows
and 15 columns
including expense column
. I have completed all of the processes for SVR. Now I want to make the training set to include the rows until row number 1000.
The test set will have one single row, row number 1001
.
For preparing the training and testing the model I need to take the expense column
as the target value and all other columns will be taken as the features.
But I know the method for splitting it into training(50%) and testing set(50%). Which I included below:
from sklearn.svm import SVR
import pandas
import sklearn
csv = pandas.read_csv('data.csv')
train, test = sklearn.cross_validation.train_test_split(csv, train_size = 0.5)
If I prepare the training and testing set as above mention, how may I write code?