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Why scikit-learn isn’t the Best for Visualizing Decision Trees: Meet dtreeviz
Artificial Intelligence   Data Visualization   Latest   Machine Learning

Why scikit-learn isn’t the Best for Visualizing Decision Trees: Meet dtreeviz

Last Updated on September 2, 2024 by Editorial Team

Author(s): Souradip Pal

Originally published on Towards AI.

Fall in Love with Decision Trees with dtreeviz’s Visualization

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Decision Trees, also known as CART (Classification and Regression Trees), are undoubtedly one of the most intuitive algorithms in the machine learning space, thanks to their simplicity. Unlike neural networks or SVMs, where you have to invest considerable time to understand the underlying processes, decision trees are essentially a series of “if-else” statements stacked together to guide you toward a possible outcome. Sure, there’s some math involved in determining those conditions, but it’s not too overwhelming.

Yes, decision trees are straightforward, but there’s a catch. The problem doesn’t lie with the algorithm itself, but with the tools often used to visualize it — specifically, scikit-learn. The visualizations produced by scikit-learn can turn you off from decision trees altogether. Why am I saying this? Well, let’s dive into an example so you can see for yourself.

To showcase the limitations, we’ll use the famous Penguin dataset, which is readily available in seaborn.

First things first, we need to import the necessary libraries to get everything rolling. Let’s get the formalities out of the way:

Here, you can see that we’ve imported all the required libraries. Now, let’s load the dataset, perform label encoding, and… Read the full blog for free on Medium.

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