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easystats: Quickly investigate model performance

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Easystats performance is an R package that makes it easy to investigate the relevant assumptions for regression models. Simply use the check_model() function to produce a visualization that combines 6 tests for model performance. We’ll quickly:

R-Tips Weekly

This article is part of R-Tips Weekly, a weekly video tutorial that shows you step-by-step how to do common R coding tasks.

Here are the links to get set up. ?

Video Tutorial
For those that prefer Full YouTube Video Tutorials.

Learn how to use performance::check_model() in our 7-minute YouTube video tutorial.

(Click image to play tutorial)

What is Model Performance?

Model performance is the ability to understand the quality of our model predictions. This means both understanding if we have a good model and where our model is susceptible to poor predictions. We’ll see how with performance::check_model().

About the performance package:

performance is a new R package for evaluating statistical models in R. It provides a suite of tools to measure and evaluate model performance. We’ll focus on the check_model() function, which makes a helpful plot for analyzing the model quality of regression models.

The performance package (GitHub)

We’ll go through a short tutorial to get you up and running with performance::check_model().

Before we get started, get the R Cheat Sheet

performance is great for making quick plots of model performance. But, you’ll still need to learn how to model data with tidymodels. For those topics, I’ll use the Ultimate R Cheat Sheet to refer to tidymodels code in my workflow.

Quick Example:

Download the Ultimate R Cheat Sheet. Then Click the hyperlink to “tidymodels”.


Now you’re ready to quickly reference the tidymodels ecosystem and functions.

Onto the tutorial.

Model Performance Tutorial

Let’s get up and running with the performance package using check_model() with the tidymodels integration so we can assess Model Performance.

Load the Libraries and Data

First, run this code to:

  1. Load Libraries: Load performance and tidyverse.
  2. Import Data: We’re using the mpg dataset that comes with ggplot2.

Get the code.

Load the data. We’re using the mpg dataset.

Linear Regression: Make and Check Models

Next, we’ll quickly make a Linear Regression model with tidymodels. Then I’ll cover more specifics on what we are doing. Refer to the Ultimate R Cheat Sheet for more on Tidymodels beyond what we cover here. Alternatively, check out my R for Business Analysis Course (DS4B 101-R) to learn Tidymodels in-depth.

Modeling: Making and Checking the Tidymodels Linear Regression Model

Here’s the code. We follow 3-Steps:

  1. Load Tidymodels: This loads parsnip (the modeling package in the tidymodels ecosystem)

  2. Make Linear Regression Model: We set up a model specification using linear_reg(). We then select an engine with set_engine(). In our case we want “lm”, which connects to stats::lm(). We then fit() the model. We use a formula hwy ~ displ + class to make highway fuel economy our target and displacement and vehicle class our predictors. This creates a trained model.

  3. Run Check Model: With a fitted model in hand, we can run performance::check_model(), which generates the Model Performance Plot.

Get the code.

Model Performance Plot

Here is the output of check_model(), which returns a Model Performance Plot. This is actually 6-plots in one. We’ll go through them next.

Let’s go through the plots, analyzing our model performance.

Analyzing the 6 Model Performance Plots

Let’s step through the 6-plots that were returned.

Residual Linearity

The first two plots analyze the linearity of the residuals (in-sample model error) versus the fitted values. We want to make sure that our model is error is relatively flat.

Quick Assessment:

Collinearity and High Leverage Points

The next two plots analyze for collinearity and high leverage points. Collinearity is when features are highly correlated, which can throw off simple regression models (more advanced models use a concept called regularization and hyperparameter tuning to control for collinearity). High Leverage Points are observations that deviate far from the average. These can skew the predictions for linear models, and removal or model adjustment may be necessary to control model performance.

Quick Assessment:

Normality of Residuals

The last two plots analyze for the normality of residuals, which is how the model error is distributed. If the distributions are skewed, this can indicate problems with the model.

Quick Assessment:

Summary

We learned how to use the check_model() function from the performance package, which makes it easy to quickly analyze regression models for model performance. But, there’s a lot more to modeling.

It’s critical to learn how to build predictive models with tidymodels, which is the premier framework for modeling and machine learning in R.

If you’d like to learn tidymodels and data science for business, then read on. ?

My Struggles with Learning Data Science

It took me a long time to learn data science. And I made a lot of mistakes as I fumbled through learning R. I specifically had a tough time navigating the ever increasing landscape of tools and packages, trying to pick between R and Python, and getting lost along the way.

If you feel like this, you’re not alone.

In fact, that’s the driving reason that I created Business Science and Business Science University (You can read about my personal journey here).

What I found out is that:

  1. Data Science does not have to be difficult, it just has to be taught smartly

  2. Anyone can learn data science fast provided they are motivated.

How I can help

If you are interested in learning R and the ecosystem of tools at a deeper level, then I have a streamlined program that will get you past your struggles and improve your career in the process.

It’s called the 5-Course R-Track System. It’s an integrated system containing 5 courses that work together on a learning path. Through 5+ projects, you learn everything you need to help your organization: from data science foundations, to advanced machine learning, to web applications and deployment.

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Ready to take the next step? Then let’s get started.




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