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Leer Predict House Prices | Simple Linear Regression
Linear Regression with Python
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Cursusinhoud

Linear Regression with Python

Linear Regression with Python

1. Simple Linear Regression
2. Multiple Linear Regression
3. Polynomial Regression
4. Choosing The Best Model

book
Predict House Prices

Let's build a real-world example regression model. We have a file, houses_simple.csv, that holds information about housing prices with its area as a feature.

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import pandas as pd df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/b22d1166-efda-45e8-979e-6c3ecfc566fc/houses_simple.csv') print(df.head())
copy

Let's assign variables and visualize our dataset!

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import pandas as pd import matplotlib.pyplot as plt df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/b22d1166-efda-45e8-979e-6c3ecfc566fc/houses_simple.csv') X = df['square_feet'] y = df['price'] plt.scatter(X, y, alpha=0.5) plt.show()
copy

In the example with a person's height, it was much easier to imagine a line fitting the data well.
But now our data has much more variance since the target highly depends on many other things like age, location, interior, etc.
Anyway, the task is to build the line that best fits the data we have; it will show the trend. The OLS class should be used for that. Soon we will learn how to add more features, it will make the prediction better!

Taak

Swipe to start coding

  1. Assign the 'price' column of df to y.
  2. Create the X_tilde matrix using the add_constant() function from statsmodels(imported as sm).
  3. Initialize the OLS object and train it.
  4. Preprocess X_new array the same way as X.
  5. Predict the target for X_new_tilde matrix.

Oplossing

Switch to desktopSchakel over naar desktop voor praktijkervaringGa verder vanaf waar je bent met een van de onderstaande opties
Was alles duidelijk?

Hoe kunnen we het verbeteren?

Bedankt voor je feedback!

Sectie 1. Hoofdstuk 5
toggle bottom row

book
Predict House Prices

Let's build a real-world example regression model. We have a file, houses_simple.csv, that holds information about housing prices with its area as a feature.

1234
import pandas as pd df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/b22d1166-efda-45e8-979e-6c3ecfc566fc/houses_simple.csv') print(df.head())
copy

Let's assign variables and visualize our dataset!

123456789
import pandas as pd import matplotlib.pyplot as plt df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/b22d1166-efda-45e8-979e-6c3ecfc566fc/houses_simple.csv') X = df['square_feet'] y = df['price'] plt.scatter(X, y, alpha=0.5) plt.show()
copy

In the example with a person's height, it was much easier to imagine a line fitting the data well.
But now our data has much more variance since the target highly depends on many other things like age, location, interior, etc.
Anyway, the task is to build the line that best fits the data we have; it will show the trend. The OLS class should be used for that. Soon we will learn how to add more features, it will make the prediction better!

Taak

Swipe to start coding

  1. Assign the 'price' column of df to y.
  2. Create the X_tilde matrix using the add_constant() function from statsmodels(imported as sm).
  3. Initialize the OLS object and train it.
  4. Preprocess X_new array the same way as X.
  5. Predict the target for X_new_tilde matrix.

Oplossing

Switch to desktopSchakel over naar desktop voor praktijkervaringGa verder vanaf waar je bent met een van de onderstaande opties
Was alles duidelijk?

Hoe kunnen we het verbeteren?

Bedankt voor je feedback!

Sectie 1. Hoofdstuk 5
Switch to desktopSchakel over naar desktop voor praktijkervaringGa verder vanaf waar je bent met een van de onderstaande opties
Onze excuses dat er iets mis is gegaan. Wat is er gebeurd?
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