Logistic regression, also called a logit model, is used to model dichotomous outcome variables. In the logit model the log odds of the outcome is modeled as a linear combination of the predictor variables.
This page uses the following packages. Make sure that you can load
them before trying to run the examples on this page. If you do not have
a package installed, run: install.packages("packagename")
, or
if you see the version is out of date, run: update.packages()
.
library(aod) library(ggplot2)
Version info: Code for this page was tested in R version 3.0.2 (2013-09-25)
On: 2013-12-16
With: knitr 1.5; ggplot2 0.9.3.1; aod 1.3
Please note: The purpose of this page is to show how to use various data analysis commands. It does not cover all aspects of the research process which researchers are expected to do. In particular, it does not cover data cleaning and checking, verification of assumptions, model diagnostics and potential follow-up analyses.
Examples
Example 1. Suppose that we are interested in the factors that influence whether a political candidate wins an election. The outcome (response) variable is binary (0/1); win or lose. The predictor variables of interest are the amount of money spent on the campaign, the amount of time spent campaigning negatively and whether or not the candidate is an incumbent.
Example 2. A researcher is interested in how variables, such as GRE (Graduate Record Exam scores), GPA (grade point average) and prestige of the undergraduate institution, effect admission into graduate school. The response variable, admit/don’t admit, is a binary variable.
Description of the data
For our data analysis below, we are going to expand on Example 2 about getting into graduate school. We have generated hypothetical data, which can be obtained from our website from within R. Note that R requires forward slashes (/) not back slashes () when specifying a file location even if the file is on your hard drive.
mydata <- read.csv("https://stats.idre.ucla.edu/stat/data/binary.csv") ## view the first few rows of the data head(mydata)
## admit gre gpa rank ## 1 0 380 3.61 3 ## 2 1 660 3.67 3 ## 3 1 800 4.00 1 ## 4 1 640 3.19 4 ## 5 0 520 2.93 4 ## 6 1 760 3.00 2
This dataset has a binary response (outcome, dependent) variable called admit
.
There are three predictor variables: gre
, gpa
and rank
. We will treat the
variables gre
and gpa
as continuous. The variable rank
takes on the
values 1 through 4. Institutions with a rank of 1 have the highest prestige,
while those with a rank of 4 have the lowest. We can get basic descriptives for the entire
data set by using summary
. To get the standard deviations, we use sapply
to apply
the sd
function to each variable in the dataset.
summary(mydata)
## admit gre gpa rank ## Min. :0.000 Min. :220 Min. :2.26 Min. :1.00 ## 1st Qu.:0.000 1st Qu.:520 1st Qu.:3.13 1st Qu.:2.00 ## Median :0.000 Median :580 Median :3.40 Median :2.00 ## Mean :0.318 Mean :588 Mean :3.39 Mean :2.48 ## 3rd Qu.:1.000 3rd Qu.:660 3rd Qu.:3.67 3rd Qu.:3.00 ## Max. :1.000 Max. :800 Max. :4.00 Max. :4.00
sapply(mydata, sd)
## admit gre gpa rank ## 0.466 115.517 0.381 0.944
## two-way contingency table of categorical outcome and predictors we want ## to make sure there are not 0 cells xtabs(~admit + rank, data = mydata)
## rank ## admit 1 2 3 4 ## 0 28 97 93 55 ## 1 33 54 28 12
Analysis methods you might consider
Below is a list of some analysis methods you may have encountered. Some of the methods listed are quite reasonable while others have either fallen out of favor or have limitations.
- Logistic regression, the focus of this page.
- Probit regression. Probit analysis will produce results similar logistic regression. The choice of probit versus logit depends largely on individual preferences.
- OLS regression. When used with a binary response variable, this model is known as a linear probability model and can be used as a way to describe conditional probabilities. However, the errors (i.e., residuals) from the linear probability model violate the homoskedasticity and normality of errors assumptions of OLS regression, resulting in invalid standard errors and hypothesis tests. For a more thorough discussion of these and other problems with the linear probability model, see Long (1997, p. 38-40).
- Two-group discriminant function analysis. A multivariate method for dichotomous outcome variables.
- Hotelling’s T2. The 0/1 outcome is turned into the grouping variable, and the former predictors are turned into outcome variables. This will produce an overall test of significance but will not give individual coefficients for each variable, and it is unclear the extent to which each “predictor” is adjusted for the impact of the other “predictors.”
Using the logit model
The code below estimates a logistic regression model using the glm
(generalized linear model)
function. First, we convert rank
to a factor to indicate that rank should be
treated as a categorical variable.
mydata$rank <- factor(mydata$rank) mylogit <- glm(admit ~ gre + gpa + rank, data = mydata, family = "binomial")
Since we gave our model a name (mylogit
), R will not produce any
output from our regression. In order to get the results we use the summary
command:
summary(mylogit)
## ## Call: ## glm(formula = admit ~ gre + gpa + rank, family = "binomial", ## data = mydata) ## ## Deviance Residuals: ## Min 1Q Median 3Q Max ## -1.627 -0.866 -0.639 1.149 2.079 ## ## Coefficients: ## Estimate Std. Error z value Pr(>|z|) ## (Intercept) -3.98998 1.13995 -3.50 0.00047 *** ## gre 0.00226 0.00109 2.07 0.03847 * ## gpa 0.80404 0.33182 2.42 0.01539 * ## rank2 -0.67544 0.31649 -2.13 0.03283 * ## rank3 -1.34020 0.34531 -3.88 0.00010 *** ## rank4 -1.55146 0.41783 -3.71 0.00020 *** ## --- ## Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1 ## ## (Dispersion parameter for binomial family taken to be 1) ## ## Null deviance: 499.98 on 399 degrees of freedom ## Residual deviance: 458.52 on 394 degrees of freedom ## AIC: 470.5 ## ## Number of Fisher Scoring iterations: 4
- In the output above, the first thing we see is the call, this is R reminding us what the model we ran was, what options we specified, etc.
- Next we see the deviance residuals, which are a measure of model fit. This part of output shows the distribution of the deviance residuals for individual cases used in the model. Below we discuss how to use summaries of the deviance statistic to assess model fit.
- The next part of the output shows the coefficients, their standard errors, the z-statistic (sometimes
called a Wald z-statistic), and the associated p-values. Both
gre
andgpa
are statistically significant, as are the three terms forrank
. The logistic regression coefficients give the change in the log odds of the outcome for a one unit increase in the predictor variable.- For every one unit change in
gre
, the log odds of admission (versus non-admission) increases by0.002
. - For a one unit increase in
gpa
, the log odds of being admitted to graduate school increases by0.804
. - The indicator variables for
rank
have a slightly different interpretation. For example, having attended an undergraduate institution withrank
of 2, versus an institution with arank
of 1, changes the log odds of admission by-0.675
.
- For every one unit change in
- Below the table of coefficients are fit indices, including the null and deviance residuals and the AIC. Later we show an example of how you can use these values to help assess model fit.
We can use the confint
function to obtain confidence
intervals for the coefficient estimates. Note that for logistic models,
confidence intervals are based on the profiled log-likelihood function.
We can also get CIs based on just the standard errors by using the default method.
## CIs using profiled log-likelihood confint(mylogit)
## 2.5 % 97.5 % ## (Intercept) -6.271620 -1.79255 ## gre 0.000138 0.00444 ## gpa 0.160296 1.46414 ## rank2 -1.300889 -0.05675 ## rank3 -2.027671 -0.67037 ## rank4 -2.400027 -0.75354
## CIs using standard errors confint.default(mylogit)
## 2.5 % 97.5 % ## (Intercept) -6.22424 -1.75572 ## gre 0.00012 0.00441 ## gpa 0.15368 1.45439 ## rank2 -1.29575 -0.05513 ## rank3 -2.01699 -0.66342 ## rank4 -2.37040 -0.73253
We can test for an overall effect of rank
using the wald.test
function of the aod
library. The
order in which the coefficients are given in the table of coefficients is the
same as the order of the terms in the model. This is important because the
wald.test
function refers to the coefficients by their order in the model.
We use the wald.test
function. b
supplies the coefficients, while Sigma
supplies the variance covariance
matrix of the error terms, finally Terms
tells R which terms in the model
are to be tested, in this case, terms 4, 5, and 6, are the three terms for the
levels of rank
.
wald.test(b = coef(mylogit), Sigma = vcov(mylogit), Terms = 4:6)
## Wald test: ## ---------- ## ## Chi-squared test: ## X2 = 20.9, df = 3, P(> X2) = 0.00011
The chi-squared test statistic of 20.9, with three degrees of freedom is
associated with a p-value of 0.00011 indicating that the overall effect of
rank
is statistically significant.
We can also test additional hypotheses about the differences in the
coefficients for the different levels of rank. Below we
test that the coefficient for rank
=2 is equal to the coefficient for rank
=3.
The first line of code below creates a vector l
that defines the test we
want to perform. In this case, we want to test the difference (subtraction) of
the terms for rank
=2 and rank
=3 (i.e., the 4th and 5th terms in the
model). To contrast these two terms, we multiply one of them by 1, and the other
by -1. The other terms in the model are not involved in the test, so they are
multiplied by 0. The second line of code below uses L=l
to tell R that we
wish to base the test on the vector l
(rather than using the Terms option
as we did above).
l <- cbind(0, 0, 0, 1, -1, 0) wald.test(b = coef(mylogit), Sigma = vcov(mylogit), L = l)
## Wald test: ## ---------- ## ## Chi-squared test: ## X2 = 5.5, df = 1, P(> X2) = 0.019
The chi-squared test statistic of 5.5 with 1 degree of freedom is associated with
a p-value of 0.019, indicating that the difference between the coefficient for rank
=2
and the coefficient for rank
=3 is statistically significant.
You can also exponentiate the coefficients and interpret them as
odds-ratios. R will do this computation for you.
To get the exponentiated coefficients, you tell R that you want
to exponentiate (exp
), and that the object you want to exponentiate is
called coefficients and it is part of mylogit (coef(mylogit)
). We can use
the same logic to get odds ratios and their confidence intervals, by exponentiating
the confidence intervals from before. To put it all in one table, we use cbind
to
bind the coefficients and confidence intervals column-wise.
## odds ratios only exp(coef(mylogit))
## (Intercept) gre gpa rank2 rank3 rank4 ## 0.0185 1.0023 2.2345 0.5089 0.2618 0.2119
## odds ratios and 95% CI exp(cbind(OR = coef(mylogit), confint(mylogit)))
## OR 2.5 % 97.5 % ## (Intercept) 0.0185 0.00189 0.167 ## gre 1.0023 1.00014 1.004 ## gpa 2.2345 1.17386 4.324 ## rank2 0.5089 0.27229 0.945 ## rank3 0.2618 0.13164 0.512 ## rank4 0.2119 0.09072 0.471
Now we can say that for a one unit increase in gpa
, the odds of being
admitted to graduate school (versus not being admitted) increase by a factor of
2.23. For more information on interpreting odds ratios see our FAQ page
How do I interpret odds ratios in logistic regression?
. Note that while R produces it, the odds ratio for the intercept is not generally interpreted.
You can also use predicted probabilities to help you understand the model. Predicted probabilities can be computed for both categorical and continuous predictor variables. In order to create predicted probabilities we first need to create a new data frame with the values we want the independent variables to take on to create our predictions.
We will start by calculating the predicted probability of admission at each
value of rank, holding gre
and gpa
at their means. First we create
and view the data frame.
newdata1 <- with(mydata, data.frame(gre = mean(gre), gpa = mean(gpa), rank = factor(1:4))) ## view data frame newdata1
## gre gpa rank ## 1 588 3.39 1 ## 2 588 3.39 2 ## 3 588 3.39 3 ## 4 588 3.39 4
These objects must have the same names as the variables in your logistic
regression above (e.g. in this example the mean for gre
must be named
gre). Now that we have the data frame we want to use to calculate the predicted
probabilities, we can tell R to create the predicted probabilities. The first
line of code below is quite compact, we will break it apart to discuss what
various components do. The newdata1$rankP
tells R that we
want to create a new variable in the dataset (data frame) newdata1
called
rankP
, the rest of the command tells R that the values of rankP
should be predictions made using the predict( )
function. The options
within the parentheses tell R that the predictions should be based on the analysis mylogit
with values of the predictor variables coming from newdata1
and that the type of prediction
is a predicted probability (type="response"
). The second line of the code
lists the values in the data frame newdata1
. Although not
particularly pretty, this is a table of predicted probabilities.
newdata1$rankP <- predict(mylogit, newdata = newdata1, type = "response") newdata1
## gre gpa rank rankP ## 1 588 3.39 1 0.517 ## 2 588 3.39 2 0.352 ## 3 588 3.39 3 0.219 ## 4 588 3.39 4 0.185
In the above output we see that the predicted probability of being accepted
into a graduate program is 0.52 for students from the highest prestige undergraduate institutions
(rank
=1), and 0.18 for students from the lowest ranked institutions (rank
=4), holding
gre
and gpa
at their means.
We can do something very similar to create a table of predicted probabilities
varying the value of gre
and rank
. We are going to plot these, so we will create
100 values of gre
between 200 and 800, at each value of rank (i.e., 1, 2, 3, and 4).
newdata2 <- with(mydata, data.frame(gre = rep(seq(from = 200, to = 800, length.out = 100), 4), gpa = mean(gpa), rank = factor(rep(1:4, each = 100))))
The code to generate the predicted probabilities (the first line below) is the same as before, except we are also going to ask for standard errors so we can plot a confidence interval. We get the estimates on the link scale and back transform both the predicted values and confidence limits into probabilities.
newdata3 <- cbind(newdata2, predict(mylogit, newdata = newdata2, type = "link", se = TRUE)) newdata3 <- within(newdata3, { PredictedProb <- plogis(fit) LL <- plogis(fit - (1.96 * se.fit)) UL <- plogis(fit + (1.96 * se.fit)) }) ## view first few rows of final dataset head(newdata3)
## gre gpa rank fit se.fit residual.scale UL LL PredictedProb ## 1 200 3.39 1 -0.811 0.515 1 0.549 0.139 0.308 ## 2 206 3.39 1 -0.798 0.509 1 0.550 0.142 0.311 ## 3 212 3.39 1 -0.784 0.503 1 0.551 0.145 0.313 ## 4 218 3.39 1 -0.770 0.498 1 0.551 0.149 0.316 ## 5 224 3.39 1 -0.757 0.492 1 0.552 0.152 0.319 ## 6 230 3.39 1 -0.743 0.487 1 0.553 0.155 0.322
It can also be helpful to use graphs of predicted probabilities
to understand and/or present the model. We will use the ggplot2
package for graphing. Below we make a plot with the predicted probabilities,
and 95% confidence intervals.
ggplot(newdata3, aes(x = gre, y = PredictedProb)) + geom_ribbon(aes(ymin = LL, ymax = UL, fill = rank), alpha = 0.2) + geom_line(aes(colour = rank), size = 1)
We may also wish to see measures of how well our model fits. This can be
particularly useful when comparing competing models. The output produced by
summary(mylogit)
included indices of fit (shown below the coefficients), including the null and
deviance residuals and the AIC. One measure of model fit is the significance of
the overall model. This test asks whether the model with predictors fits
significantly better than a model with just an intercept (i.e., a null model).
The test statistic is the difference between the residual deviance for the model
with predictors and the null model. The test statistic is distributed
chi-squared with degrees of freedom equal to the differences in degrees of freedom between
the current and the null model (i.e., the number of predictor variables in the
model). To find the difference in deviance for the two models (i.e., the test
statistic) we can use the command:
with(mylogit, null.deviance - deviance)
## [1] 41.5
The degrees of freedom for the difference between the two models is equal to the number of predictor variables in the mode, and can be obtained using:
with(mylogit, df.null - df.residual)
## [1] 5
Finally, the p-value can be obtained using:
with(mylogit, pchisq(null.deviance - deviance, df.null - df.residual, lower.tail = FALSE))
## [1] 7.58e-08
The chi-square of 41.46 with 5 degrees of freedom and an associated p-value of less than 0.001 tells us that our model as a whole fits significantly better than an empty model. This is sometimes called a likelihood ratio test (the deviance residual is -2*log likelihood). To see the model’s log likelihood, we type:
logLik(mylogit)
## 'log Lik.' -229 (df=6)
Things to consider
- Empty cells or small cells: You should check for empty or small cells by doing a crosstab between categorical predictors and the outcome variable. If a cell has very few cases (a small cell), the model may become unstable or it might not run at all.
- Separation or quasi-separation (also called perfect prediction), a condition in which the outcome does not vary at some levels of the independent variables. See our page FAQ: What is complete or quasi-complete separation in logistic/probit regression and how do we deal with them? for information on models with perfect prediction.
- Sample size: Both logit and probit models require more cases than OLS regression because they use maximum likelihood estimation techniques. It is sometimes possible to estimate models for binary outcomes in datasets with only a small number of cases using exact logistic regression. It is also important to keep in mind that when the outcome is rare, even if the overall dataset is large, it can be difficult to estimate a logit model.
- Pseudo-R-squared: Many different measures of psuedo-R-squared exist. They all attempt to provide information similar to that provided by R-squared in OLS regression; however, none of them can be interpreted exactly as R-squared in OLS regression is interpreted. For a discussion of various pseudo-R-squareds see Long and Freese (2006) or our FAQ page What are pseudo R-squareds?
- Diagnostics: The diagnostics for logistic regression are different from those for OLS regression. For a discussion of model diagnostics for logistic regression, see Hosmer and Lemeshow (2000, Chapter 5). Note that diagnostics done for logistic regression are similar to those done for probit regression.
References
Hosmer, D. & Lemeshow, S. (2000). Applied Logistic Regression (Second Edition). New York: John Wiley & Sons, Inc.
Long, J. Scott & Freese, Jeremy. (2006). Regression Models for Categorical Dependent Variables Using Stata, Second Edition. College Station, TX: Stata Press.
Long, J. Scott (1997). Regression Models for Categorical and Limited Dependent Variables. Thousand Oaks, CA: Sage Publications.
See also
- R Online Manual
glm
- Stat Books for Loan, Logistic Regression and Limited Dependent Variables
- Everitt, B. S. and Hothorn, T. A Handbook of Statistical Analyses Using R