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Linear Regression with Two Features | Multiple Linear Regression
Linear Regression for ML
course content

Contenido del Curso

Linear Regression for ML

Linear Regression for ML

1. Simple Linear Regression
2. Multiple Linear Regression
3. Polynomial Regression
4. Evaluating and Comparing Models

bookLinear Regression with Two Features

So far, we have looked at linear regression with only one feature. It is called simple linear regression. But in real-life tasks, the target usually depends on multiple features. Linear regression with more than one feature is called Multiple Linear Regression.

Two-feature Linear Regression Equation

In our example with heights, adding the mother's height as a feature to the model would likely improve our predictions.
But how do we add a new feature to the model? An equation defines linear regression, so we just need to add a new feature to an equation:

Visualization

When we discussed the simple regression model, we built the 2D plot where one axis is the feature, and the other is the target.
Now that we have two features, we need two axes for features and the third one for the target. So we are moving from a 2D space to a 3D one, which is much harder to visualize.
The video shows a 3D scatterplot of the dataset in our example.

But now, our equation is not an equation of a line.
It is an equation of a plane.
Here is a scatterplot along with the predicted plane:

You may have noticed that mathematically our equation hasn't become much harder.
But unfortunately, the visualization has.

¿Todo estuvo claro?

¿Cómo podemos mejorarlo?

¡Gracias por tus comentarios!

Sección 2. Capítulo 1
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