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Impara Polynomial Regression | Polynomial Regression
Linear Regression for ML
course content

Contenuti del Corso

Linear Regression for ML

Linear Regression for ML

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

book
Polynomial Regression

In the previous chapter, we explored quadratic regression, which has the graph of a parabola.
In the same way, we could add the to the equation to get the Cubic Regression that has a more complex graph.
We could also add x⁴ and so on...

A degree of a Polynomial Regression

It is generally called the polynomial equation and is the equation of Polynomial Regression.
The highest power of x defines a degree of a Polynomial Regression in the equation. Here is an example:

n-degree Polynomial Regression

Considering n to be a whole number greater than two, we can write down the equation of an n-degree Polynomial Regression.

Normal Equation

And as always, parameters are found using the Normal Equation:

Polynomial Regression is actually a special case of Multiple Linear Regression.
But instead of multiple whole different features (x₁, x₂, ..., xₙ), we use features that are results of raising x to different powers (x, , ..., xⁿ).
Therefore, in a Normal Equation, columns of are the X raised to different powers.

Polynomial Regression with multiple features

You can use the Polynomial Regression with more than one feature to create even more complex shapes.
But even with two features, 2-degree Polynomial Regression has quite a long equation.

Using Polynomial Regression with many features will increase the dataset's size crucially.
There are a lot of problems associated with it, so for wide datasets (with many features), Polynomial Regression is a bad choice. Other ML models usually handle such datasets better.

question mark

Choose the INCORRECT statement.

Select the correct answer

Tutto è chiaro?

Come possiamo migliorarlo?

Grazie per i tuoi commenti!

Sezione 3. Capitolo 2

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course content

Contenuti del Corso

Linear Regression for ML

Linear Regression for ML

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

book
Polynomial Regression

In the previous chapter, we explored quadratic regression, which has the graph of a parabola.
In the same way, we could add the to the equation to get the Cubic Regression that has a more complex graph.
We could also add x⁴ and so on...

A degree of a Polynomial Regression

It is generally called the polynomial equation and is the equation of Polynomial Regression.
The highest power of x defines a degree of a Polynomial Regression in the equation. Here is an example:

n-degree Polynomial Regression

Considering n to be a whole number greater than two, we can write down the equation of an n-degree Polynomial Regression.

Normal Equation

And as always, parameters are found using the Normal Equation:

Polynomial Regression is actually a special case of Multiple Linear Regression.
But instead of multiple whole different features (x₁, x₂, ..., xₙ), we use features that are results of raising x to different powers (x, , ..., xⁿ).
Therefore, in a Normal Equation, columns of are the X raised to different powers.

Polynomial Regression with multiple features

You can use the Polynomial Regression with more than one feature to create even more complex shapes.
But even with two features, 2-degree Polynomial Regression has quite a long equation.

Using Polynomial Regression with many features will increase the dataset's size crucially.
There are a lot of problems associated with it, so for wide datasets (with many features), Polynomial Regression is a bad choice. Other ML models usually handle such datasets better.

question mark

Choose the INCORRECT statement.

Select the correct answer

Tutto è chiaro?

Come possiamo migliorarlo?

Grazie per i tuoi commenti!

Sezione 3. Capitolo 2
Siamo spiacenti che qualcosa sia andato storto. Cosa è successo?
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