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Lernen Prediction | Building and Training Model
Explore the Linear Regression Using Python
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Kursinhalt

Explore the Linear Regression Using Python

Explore the Linear Regression Using Python

1. What is the Linear Regression?
2. Correlation
3. Building and Training Model
4. Metrics to Evaluate the Model
5. Multivariate Linear Regression

book
Prediction

Once we've trained our module, it's time to think about test data evaluation and future predictions. We can make predictions using the method predict().

Let's look at an example. Prediction for flavanoids when the number of total phenols is 1:

12
new_total_phenols = np.array([1]).reshape(-1,1) print(model.predict(new_total_phenols))
copy

Method .reshape() gives a new shape to an array without changing its data. Input must be a 2-dimension (DataFrame or 2-dimension array will work here).

This value is the same as if we had substituted the line b + kx, where b is the estimated intersection with the model, and k is the slope. Please note that we multiply by 1 since the number of total phenols is 1 (x = 1).

1
prediction = model.intercept_ + model.coef_*1
copy

We can also put our testing data to get predictions for all amounts of flavanoids:

1
y_test_predicted = model.predict(X_test)
copy
Aufgabe

Swipe to start coding

Predict with the previous split-train data the amount of flavanoids if the total phenols is 2.

  1. [Line #6] Import the numpy library.
  2. [Line #26] Initialize the linear regression model.
  3. [Line #30] Assign np.array() and number of total phenols as the parameter (2) to the variable new_total_phenols (don’t forget to use the function .reshape(-1,1)).
  4. [Line #31] Predict amount of flavanoids
  5. [Line #32] Print the predicted amount of flavanoids.

Lösung

Switch to desktopWechseln Sie zum Desktop, um in der realen Welt zu übenFahren Sie dort fort, wo Sie sind, indem Sie eine der folgenden Optionen verwenden
War alles klar?

Wie können wir es verbessern?

Danke für Ihr Feedback!

Abschnitt 3. Kapitel 3
toggle bottom row

book
Prediction

Once we've trained our module, it's time to think about test data evaluation and future predictions. We can make predictions using the method predict().

Let's look at an example. Prediction for flavanoids when the number of total phenols is 1:

12
new_total_phenols = np.array([1]).reshape(-1,1) print(model.predict(new_total_phenols))
copy

Method .reshape() gives a new shape to an array without changing its data. Input must be a 2-dimension (DataFrame or 2-dimension array will work here).

This value is the same as if we had substituted the line b + kx, where b is the estimated intersection with the model, and k is the slope. Please note that we multiply by 1 since the number of total phenols is 1 (x = 1).

1
prediction = model.intercept_ + model.coef_*1
copy

We can also put our testing data to get predictions for all amounts of flavanoids:

1
y_test_predicted = model.predict(X_test)
copy
Aufgabe

Swipe to start coding

Predict with the previous split-train data the amount of flavanoids if the total phenols is 2.

  1. [Line #6] Import the numpy library.
  2. [Line #26] Initialize the linear regression model.
  3. [Line #30] Assign np.array() and number of total phenols as the parameter (2) to the variable new_total_phenols (don’t forget to use the function .reshape(-1,1)).
  4. [Line #31] Predict amount of flavanoids
  5. [Line #32] Print the predicted amount of flavanoids.

Lösung

Switch to desktopWechseln Sie zum Desktop, um in der realen Welt zu übenFahren Sie dort fort, wo Sie sind, indem Sie eine der folgenden Optionen verwenden
War alles klar?

Wie können wir es verbessern?

Danke für Ihr Feedback!

Abschnitt 3. Kapitel 3
Switch to desktopWechseln Sie zum Desktop, um in der realen Welt zu übenFahren Sie dort fort, wo Sie sind, indem Sie eine der folgenden Optionen verwenden
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