Challenge: Predicting Prices Using Two Features
For this challenge, the same housing dataset will be used. However, now it has two features: age and area of the house (columns 'age' and 'square_feet').
1234import pandas as pd df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/b22d1166-efda-45e8-979e-6c3ecfc566fc/houseprices.csv') print(df.head())
Your task is to build a Multiple Linear Regression model using the OLS class. Also, you will print the summary table to look at the p-values of each feature.
Swipe to start coding
- Assign the
'age'and'square_feet'columns ofdftoX. - Preprocess the
Xfor theOLS's class constructor. - Build and train the model using the
OLSclass. - Preprocess the
X_newarray the same asX. - Predict the target for
X_new. - Print the model's summary table.
Рішення
If you did everything right, you got the p-values close to zero. That means all our features are significant for the model.
Дякуємо за ваш відгук!
single
Запитати АІ
Запитати АІ
Запитайте про що завгодно або спробуйте одне із запропонованих запитань, щоб почати наш чат
Чудово!
Completion показник покращився до 6.67
Challenge: Predicting Prices Using Two Features
Свайпніть щоб показати меню
For this challenge, the same housing dataset will be used. However, now it has two features: age and area of the house (columns 'age' and 'square_feet').
1234import pandas as pd df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/b22d1166-efda-45e8-979e-6c3ecfc566fc/houseprices.csv') print(df.head())
Your task is to build a Multiple Linear Regression model using the OLS class. Also, you will print the summary table to look at the p-values of each feature.
Swipe to start coding
- Assign the
'age'and'square_feet'columns ofdftoX. - Preprocess the
Xfor theOLS's class constructor. - Build and train the model using the
OLSclass. - Preprocess the
X_newarray the same asX. - Predict the target for
X_new. - Print the model's summary table.
Рішення
If you did everything right, you got the p-values close to zero. That means all our features are significant for the model.
Дякуємо за ваш відгук!
single