I am trying to load training and test data from a csv, run the random forest regressor in scikit/sklearn, and then predict the output from the test file.
The TrainLoanData.csv file contains 5 columns; the first column is the output and the next 4 columns are the features. The TestLoanData.csv contains 4 columns - the features.
When I run the code, I get error:
predicted_probs = ["%f" % x for x in predicted_probs] IndexError: invalid index to scalar variable.
What does this mean?
Here is my code:
import numpy, scipy, sklearn, csv_io //csv_io from https://raw.github.com/benhamner/BioResponse/master/Benchmarks/csv_io.py from sklearn import datasets from sklearn.ensemble import RandomForestRegressor def main(): #read in the training file train = csv_io.read_data("TrainLoanData.csv") #set the training responses target = [x for x in train] #set the training features train = [x[1:] for x in train] #read in the test file realtest = csv_io.read_data("TestLoanData.csv") # random forest code rf = RandomForestRegressor(n_estimators=10, min_samples_split=2, n_jobs=-1) # fit the training data print('fitting the model') rf.fit(train, target) # run model against test data predicted_probs = rf.predict(realtest) print predicted_probs predicted_probs = ["%f" % x for x in predicted_probs] csv_io.write_delimited_file("random_forest_solution.csv", predicted_probs) main()