How to Interpret a Regression Line - dummies (2024)

In statistics, once you have calculated the slope and y-intercept to form the best-fitting regression line in a scatterplot, you can then interpret their values.

Interpreting the slope of a regression line

The slope is interpreted in algebra as rise over run. If, for example, the slope is 2, you can write this as 2/1 and say that as you move along the line, as the value of the X variable increases by 1, the value of the Y variable increases by 2. In a regression context, the slope is the heart and soul of the equation because it tells you how much you can expect Y to change as X increases.

In general, the units for slope are the units of the Y variable per units of the X variable. It’s a ratio of change in Y per change in X. Suppose in studying the effect of dosage level in milligrams (mg) on systolic blood pressure (mmHg), a researcher finds that the slope of the regression line is –2.5. You can write this as –2.5/1 and say that systolic blood pressure is expected to decrease by 2.5 mmHg on average per 1 mg increase in drug dosage.

Always make sure to use proper units when interpreting slope. If you don’t consider units, you won’t really see the connection between the two variables at hand. For example, if Y is an exam score and X = study time, and you find the slope of the equation is 5, what does this mean? Not much without any units to draw from. Including the units, you see you get an increase of 5 points (change in Y) for every 1-hour increase in studying (change in X). Also be sure to watch for variables that have more than one common unit, such as temperature being in either Fahrenheit or Celsius; know which unit is being used.

If using a 1 in the denominator of slope is not super-meaningful to you, you can multiply the top and bottom by any number (as long as it’s the same number) and interpret it that way instead. In the systolic blood pressure example, instead of writing slope as –2.5/1 and interpreting it as a drop of 2.5 mmHg per 1 mg increase of the drug, you can multiply the top and bottom by 10 to get –25/10 and say an increase in dosage of 10 mg results in a decrease in systolic blood pressure of 25 mmHg.

Interpreting the y-intercept of a regression line

The y-intercept is the place where the regression line y = mx + b crosses the y-axis (where x = 0), and is denoted by b. Sometimes the y-intercept can be interpreted in a meaningful way, and sometimes not. This uncertainty differs from slope, which is always interpretable. In fact, between the two concepts of slope and y-intercept, the slope is the star of the show, with the y-intercept serving as the less-famous but still noticeable sidekick.

At times the y-intercept makes no sense. For example, suppose you use rain to predict bushels per acre of corn. You know if the data set contains a point where rain is 0, the bushels per acre must be 0 as well. As a result, if the regression line crosses the y-axis somewhere else besides 0 (and there is no guarantee it will cross at 0 — it depends on the data), the y-intercept will make no sense. Similarly, in this context a negative value of y (corn production) cannot be interpreted.

Another situation where you can’t interpret the y-intercept is when data are not present near the point where x = 0. For example, suppose you want to use students’ scores on Midterm 1 to predict their scores on Midterm 2. The y-intercept represents a prediction for Midterm 2 when the score on Midterm 1 is 0. You don’t expect scores on a midterm to be at or near 0 unless someone didn’t take the exam, in which case her score wouldn’t be included in the first place.

Many times, however, the y-intercept is of interest to you, it has meaning, if you have data collected in the area where x = 0. For example, if you’re predicting coffee sales at football games in Green Bay, Wisconsin, using temperature, some games get cold enough to have temperatures at or even below 0 degrees Fahrenheit, so predicting coffee sales at these temperatures makes sense. (As you may guess, they sell more and more coffee as the temperature dips.)

When using a regression line, you can only apply the interpretations of the slope and y-intercept over the range of x values. It is dangerous to make predictions or statements beyond the scope of what you observed in the data set. Doing so is known as extrapolation. For example, suppose you collect data on the heights of children ages 2 to 8, and you calculate a slope of 3.7 inches per year. Thus, on average, these people grow 3.7 inches every year. But should we use that same value of slope to predict their height later in life as teenagers or even adults? Definitely not.

About This Article

This article is from the book:

  • Statistics For Dummies ,

About the book author:

Deborah J. Rumsey, PhD, is an Auxiliary Professor and Statistics Education Specialist at The Ohio State University. She is the author of Statistics For Dummies, Statistics II For Dummies, Statistics Workbook For Dummies, and Probability For Dummies.

This article can be found in the category:

  • Statistics ,
How to Interpret a Regression Line  - dummies (2024)

FAQs

How do you interpret simple linear regression results? ›

It is interpreted as the proportion of observed y variation that can be explained by the simple linear regression model (attributed to an approximate linear relationship between y and x). The higher the value of r2, the more successful is the simple linear regression model in explaining y variation.

How do you interpret a linear regression line? ›

Linear regression and interpretation

In this equation, β0 is the y intercept and refers to the estimated value of y when x is equal to 0. The coefficient β1 is the regression coefficient and denotes that the estimated increase in the dependent variable for every unit increase in the independent variable.

How do you easily understand linear regression? ›

Definition. Simple linear regression aims to find a linear relationship to describe the correlation between an independent and possibly dependent variable. The regression line can be used to predict or estimate missing values, this is known as interpolation.

What is the best explanation of linear regression? ›

Linear regression fits a straight line or surface that minimizes the discrepancies between predicted and actual output values. There are simple linear regression calculators that use a “least squares” method to discover the best-fit line for a set of paired data.

How do you explain regression analysis? ›

Regression analysis is a set of statistical methods used for the estimation of relationships between a dependent variable and one or more independent variables. It can be utilized to assess the strength of the relationship between variables and for modeling the future relationship between them.

How do you describe linear regression analysis example? ›

We could use the equation to predict weight if we knew an individual's height. In this example, if an individual was 70 inches tall, we would predict his weight to be: Weight = 80 + 2 x (70) = 220 lbs. In this simple linear regression, we are examining the impact of one independent variable on the outcome.

How do you interpret a regression line from a scatter plot? ›

If the regression line has a positive slope, the data has a positive linear relationship; if the regression line of the data has a negative slope, the data has a negative linear relationship. If the data is clustered tightly around its regression line, we might say it shows a strong linear relationship.

What is an example of a linear regression? ›

Linear regression is the most basic and commonly used predictive analysis. One variable is considered to be an explanatory variable, and the other is considered to be a dependent variable. For example, a modeler might want to relate the weights of individuals to their heights using a linear regression model.

How do you explain linear regression to a child? ›

In simple linear regression, there is only one independent variable, which is used to predict the dependent variable. The relationship between the two variables is assumed to be linear, which means that the change in the independent variable will lead to a proportional change in the dependent variable.

What is an example of a simple regression? ›

Examples of Linear Regression

The weight of the person is linearly related to their height. So, this shows a linear relationship between the height and weight of the person. According to this, as we increase the height, the weight of the person will also increase.

What does my regression equation mean? ›

The regression equation is written as Y = a + bX +e. Y is the value of the Dependent variable (Y), what is being predicted or explained. a or Alpha, a constant; equals the value of Y when the value of X=0. b or Beta, the coefficient of X; the slope of the regression line; how much Y changes for each one-unit change in ...

What does a regression equation indicate? ›

A regression equation is used in stats to find out what relationship, if any, exists between sets of data. For example, if you measure a child's height every year you might find that they grow about 3 inches a year.

How do you interpret the slope and y-intercept of the linear regression equation? ›

The slope represents the change in y for any 1 unit change in x. The intercept, also known as the y-intercept, is where the line of best fit intersects the y-axis. It represents the initial condition or starting point of the data.

How do you use the regression equation to predict a value? ›

How to Use a Linear Regression Model to Calculate a Predicted Response Value. Step 1: Identify the independent variable . Step 2: Calculate the predicted response value by plugging in the given value into the least-squares linear regression line y ^ ( x ) = a x + b .

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