R Squared: Difference between revisions

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<math>
<math>
F = 1 - \frac{\text{SS}_{\text{res}}}{\text{SS}\frac{\sum (pfit_i - pmean)_{\text{tot}}}
\[
 
F = SS_{\text{mean}} - \frac{\frac{SS_{\text{fit}}}{Pfit - Pmean}}{\frac{SS_{\text{fit}}}{n - Pfit}}
F = \frac{\frac{\sum (pfit_i - pmean)^2}{\text{df}_{\text{model}}}}{\frac{\sum (y_i - pfit_i)^2}{\text{df}_{\text{residual}}}}
\]
</math>
<br>

Revision as of 02:36, 23 April 2025

Introduction

This is all about R².

My Thoughts

Least Squares Review

Most of this requires you to think about a dataset with lots of points. What we are trying to do is with least squares is find the best fit for a line for our data points. Once we have this we could maybe predict for a new data point what the y-value might be given the x-value. Here is the formula
S=i=1n(yiy^i)2
And here is an example of usage

R Squared

With R2 we are looking at the variances (changes) using the mean and the line. Squaring means we don't care about negative or positive.

What is the difference

Well I guess R² = R squared. R² is the variance between a dependent variable and an independent variable in terms of percentage. Therefore 0.4 R² = 40% and R = 0.2. I guess I agree that using R² does provide an easier way to understand what you mean however there is no sign on R².

Formula for R²

This is given by

A reminder of how we calculate variance, we add up the differences from the mean like below. Note this shows a population and we should divide by n-1 not n but I liked the graphic.

This was a nice picture

F

So we know this is formula for R2
R2=1SSresSStot
Where

  • SSres is the sum of squared residuals, which measures the variability of the observed data around the predicted values.
  • SStot is the total sum of squares, which measures the variability of the observed data around the mean.

So now we move on to F
<math> \[ F = SS_{\text{mean}} - \frac{\frac{SS_{\text{fit}}}{Pfit - Pmean}}{\frac{SS_{\text{fit}}}{n - Pfit}} \]