I'm new in machine learning, and trying to implement linear model estimators that provide Scikit to predict price of the used car. I used different combinations of linear models, like
Elastic Net, but all of them in most cases return negative score (-0.6 <= score <= 0.1).
Someone told me that this is because of multicollinearity problem, but I don't know how to solve it.
My sample code:
import numpy as np import pandas as pd from sklearn import linear_model from sqlalchemy import create_engine from sklearn.linear_model import Ridge engine = create_engine('sqlite:///path-to-db') query = "SELECT mileage, carcass, engine, transmission, state, drive, customs_cleared, price FROM cars WHERE mark='some mark' AND model='some model' AND year='some year'" df = pd.read_sql_query(query, engine) df = df.dropna() df = df.reindex(np.random.permutation(df.index)) X_full = df[['mileage', 'carcass', 'engine', 'transmission', 'state', 'drive', 'customs_cleared']] y_full = df['price'] n_train = -len(X_full)/5 X_train = X_full[:n_train] X_test = X_full[n_train:] y_train = y_full[:n_train] y_test = y_full[n_train:] predict = [200000, 0, 2.5, 0, 0, 2, 0] # parameters of the car to predict model = Ridge(alpha=1.0) model.fit(X_train, y_train) y_estimate = model.predict(X_test) print("Residual sum of squares: %.2f" % np.mean((y_estimate - y_test) ** 2)) print("Variance score: %.2f" % model.score(X_test, y_test)) print("Predicted price: ", model.predict(predict))
Carcass, state, drive and customs cleared are numeric and represent types.
What is correct way to implement prediction? Maybe some data preprocessing or different algorithm.
Thanks for any advance!