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Oppiskele Challenge | Simple Linear Regression
Linear Regression for ML

Pyyhkäise näyttääksesi valikon

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Challenge

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())
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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)
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 at least show the trend. The LinearRegression class should be used for that. Soon we will learn how to add more features to improve the predictions!

Tehtävä

Swipe to start coding

  1. Import the LinearRegression class from sklearn.linear_model.
  2. Assign the 'square_feet' column to X.
    Make sure you assign pandas DataFrame with a single column instead of pandas Series (refer to hint if needed).
  3. Initialize the LinearRegression model.
  4. Train the model.
  5. Predict the target for the X_new array.

Ratkaisu

Switch to desktopVaihda työpöytään todellista harjoitusta vartenJatka siitä, missä olet käyttämällä jotakin alla olevista vaihtoehdoista
Oliko kaikki selvää?

Miten voimme parantaa sitä?

Kiitos palautteestasi!

Osio 1. Luku 4
Pahoittelemme, että jotain meni pieleen. Mitä tapahtui?

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book
Challenge

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!

12345678
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)
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 at least show the trend. The LinearRegression class should be used for that. Soon we will learn how to add more features to improve the predictions!

Tehtävä

Swipe to start coding

  1. Import the LinearRegression class from sklearn.linear_model.
  2. Assign the 'square_feet' column to X.
    Make sure you assign pandas DataFrame with a single column instead of pandas Series (refer to hint if needed).
  3. Initialize the LinearRegression model.
  4. Train the model.
  5. Predict the target for the X_new array.

Ratkaisu

Switch to desktopVaihda työpöytään todellista harjoitusta vartenJatka siitä, missä olet käyttämällä jotakin alla olevista vaihtoehdoista
Oliko kaikki selvää?

Miten voimme parantaa sitä?

Kiitos palautteestasi!

Osio 1. Luku 4
Switch to desktopVaihda työpöytään todellista harjoitusta vartenJatka siitä, missä olet käyttämällä jotakin alla olevista vaihtoehdoista
Pahoittelemme, että jotain meni pieleen. Mitä tapahtui?
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