# How to fit a random effects model with Subject as random in R?

Given data of the following form

``````myDat = structure(list(Score = c(1.84, 2.24, 3.8, 2.3, 3.8, 4.55, 1.13,
2.49, 3.74, 2.84, 3.3, 4.82, 1.74, 2.89, 3.39, 2.08, 3.99, 4.07,
1.93, 2.39, 3.63, 2.55, 3.09, 4.76), Subject = c(1L, 1L, 1L,
2L, 2L, 2L, 3L, 3L, 3L, 4L, 4L, 4L, 5L, 5L, 5L, 6L, 6L, 6L, 7L,
7L, 7L, 8L, 8L, 8L), Condition = c(0L, 0L, 0L, 1L, 1L, 1L, 0L,
0L, 0L, 1L, 1L, 1L, 0L, 0L, 0L, 1L, 1L, 1L, 0L, 0L, 0L, 1L, 1L,
1L), Time = c(1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L,
1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L)), .Names = c("Score",
"Subject", "Condition", "Time"), class = "data.frame", row.names = c(NA,
-24L))
``````

I would like to model Score as a function of Subject, Condition and Time. Each (human) Subject's score was measured three times, indicated by the variable Time, so I have repeated measures.

How can I build in R a random effects model with Subject effects fitted as random?

ADDENDUM: It's been asked how I generated these data. You guessed it, the data are fake as the day is long. Score is time plus random noise and being in Condition 1 adds a point to Score. It's instructive as a typical Psych setup. You have a task where people's score gets better with practice (time) and a drug (condition==1) that enhances score.

Here are some more realistic data for the purposes of this discussion. Now simulated participants have a random "skill" level that is added to their scores. Also, the factors are now strings.

``````myDat = structure(list(Score = c(1.62, 2.18, 2.3, 3.46, 3.85, 4.7, 1.41,
2.21, 3.32, 2.73, 3.34, 3.27, 2.14, 2.73, 2.74, 3.39, 3.59, 4.01,
1.81, 1.83, 3.22, 3.64, 3.51, 4.26), Subject = structure(c(1L,
1L, 1L, 2L, 2L, 2L, 3L, 3L, 3L, 4L, 4L, 4L, 5L, 5L, 5L, 6L, 6L,
6L, 7L, 7L, 7L, 8L, 8L, 8L), .Label = c("A", "B", "C", "D", "E",
"F", "G", "H"), class = "factor"), Condition = structure(c(1L,
1L, 1L, 2L, 2L, 2L, 1L, 1L, 1L, 2L, 2L, 2L, 1L, 1L, 1L, 2L, 2L,
2L, 1L, 1L, 1L, 2L, 2L, 2L), .Label = c("No", "Yes"), class = "factor"),
Time = structure(c(1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L,
2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L), .Label = c("1PM",
"2PM", "3PM"), class = "factor")), .Names = c("Score", "Subject",
"Condition", "Time"), class = "data.frame", row.names = c(NA,
-24L))
``````

See it:

``````library(ggplot2)
qplot(Time, Score, data = myDat, geom = "line", group = Subject, colour = factor(Condition))
``````
-
You can more concisely construct a data frame using the `data.frame` function: myDat <- data.frame(Score = c(1.84, 2.24, 3.8, 2.3, 3.8, 4.55, 1.13, 2.49, 3.74, 2.84, 3.3, 4.82, 1.74, 2.89, 3.39, 2.08, 3.99, 4.07, 1.93, 2.39, 3.63, 2.55, 3.09, 4.76), Subject = c(1L, 1L, 1L, 1L, 1L, 1L, 2L, 2L, 2L, 2L, 2L, 2L, 3L, 3L, 3L, 3L, 3L, 3L, 4L, 4L, 4L, 4L, 4L, 4L), Condition = c(0L, 0L, 0L, 1L, 1L, 1L, 0L, 0L, 0L, 1L, 1L, 1L, 0L, 0L, 0L, 1L, 1L, 1L, 0L, 0L, 0L, 1L, 1L, 1L), Time = c(1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L, 1L, 2L, 3L)) –  Jonathan Chang Sep 4 '09 at 18:16
@Chang. The structure syntax is what you get when you use `dput` in a data.frame. –  Eduardo Leoni Sep 4 '09 at 18:35
@Leoni. Learn something new every day! –  Jonathan Chang Sep 4 '09 at 18:42

using the nlme library...

Answering your stated question, you can create a random intecept mixed effect model using the following code:

``````> library(nlme)
> m1 <- lme(Score ~ Condition + Time + Condition*Time,
+ data = myDat, random = ~ 1 | Subject)
> summary(m1)
Linear mixed-effects model fit by REML
Data: myDat
AIC      BIC    logLik
31.69207 37.66646 -9.846036

Random effects:
Formula: ~1 | Subject
(Intercept)  Residual
StdDev: 5.214638e-06 0.3151035

Fixed effects: Score ~ Condition + Time + Condition * Time
Value Std.Error DF  t-value p-value
(Intercept)    0.6208333 0.2406643 14 2.579666  0.0218
Condition      0.7841667 0.3403507  6 2.303996  0.0608
Time           0.9900000 0.1114059 14 8.886423  0.0000
Condition:Time 0.0637500 0.1575517 14 0.404629  0.6919
Correlation:
(Intr) Condtn Time
Condition      -0.707
Time           -0.926  0.655
Condition:Time  0.655 -0.926 -0.707

Standardized Within-Group Residuals:
Min         Q1        Med         Q3        Max
-1.5748794 -0.6704147  0.2069426  0.7467785  1.5153752

Number of Observations: 24
Number of Groups: 8
``````

The intercept variance is basically 0, indicating no within subject effect, so this model is not capturing the between time relationship well. A random intercept model is rarely the type of model you want for a repeated measures design. A random intercept model assumes that the correlations between all time points are equal. i.e. the correlation between time 1 and time 2 is the same as between time 1 and time 3. Under normal circumstances (perhaps not those generating your fake data) we would expect the later to be less than the former. An auto regressive structure is usually a better way to go.

``````> m2<-gls(Score ~ Condition + Time + Condition*Time,
+ data = myDat, correlation = corAR1(form = ~ Time | Subject))
> summary(m2)
Generalized least squares fit by REML
Model: Score ~ Condition + Time + Condition * Time
Data: myDat
AIC      BIC    logLik
25.45446 31.42886 -6.727232

Correlation Structure: AR(1)
Formula: ~Time | Subject
Parameter estimate(s):
Phi
-0.5957973

Coefficients:
Value Std.Error   t-value p-value
(Intercept)    0.6045402 0.1762743  3.429543  0.0027
Condition      0.8058448 0.2492895  3.232566  0.0042
Time           0.9900000 0.0845312 11.711652  0.0000
Condition:Time 0.0637500 0.1195452  0.533271  0.5997

Correlation:
(Intr) Condtn Time
Condition      -0.707
Time           -0.959  0.678
Condition:Time  0.678 -0.959 -0.707

Standardized residuals:
Min         Q1        Med         Q3        Max
-1.6850557 -0.6730898  0.2373639  0.8269703  1.5858942

Residual standard error: 0.2976964
Degrees of freedom: 24 total; 20 residual
``````

Your data is showing a -.596 between time point correlation, which seems odd. normally there should, at a minimum be a positive correlation between time points. How was this data generated?

With your new data we know that the data generating process is equivalent to a random intercept model (though that is not the most realistic for a longitudinal study. The visualization shows that the effect of time seems to be fairly linear, so we should feel comfortable treating it as a numeric variable.

``````> library(nlme)
> m1 <- lme(Score ~ Condition + as.numeric(Time) + Condition*as.numeric(Time),
+ data = myDat, random = ~ 1 | Subject)
> summary(m1)
Linear mixed-effects model fit by REML
Data: myDat
AIC      BIC    logLik
38.15055 44.12494 -13.07527

Random effects:
Formula: ~1 | Subject
(Intercept)  Residual
StdDev:   0.2457355 0.3173421

Fixed effects: Score ~ Condition + as.numeric(Time) + Condition * as.numeric(Time)
Value Std.Error DF   t-value p-value
(Intercept)                    1.142500 0.2717382 14  4.204415  0.0009
ConditionYes                   1.748333 0.3842958  6  4.549447  0.0039
as.numeric(Time)               0.575000 0.1121974 14  5.124898  0.0002
ConditionYes:as.numeric(Time) -0.197500 0.1586710 14 -1.244714  0.2337
Correlation:
(Intr) CndtnY as.(T)
ConditionYes                  -0.707
as.numeric(Time)              -0.826  0.584
ConditionYes:as.numeric(Time)  0.584 -0.826 -0.707

Standardized Within-Group Residuals:
Min          Q1         Med          Q3         Max
-1.44560367 -0.65018585  0.01864079  0.52930925  1.40824838

Number of Observations: 24
Number of Groups: 8
``````

We see a significant Condition effect, indicating that the 'yes' condition tends to have higher scores (by about 1.7), and a significant time effect, indicating that both groups go up over time. Supporting the plot, we find no differential effect of time between the two groups (the interaction). i.e. the slopes are the same.

-
@Ian - see the note I've added to the question –  Dan Goldstein Sep 5 '09 at 10:56
Where do the degrees of freedom come from in this? I know it's more complicated with lme4, but this should be straightforward, no? –  Amyunimus Jul 14 '14 at 1:31

It's not an answer to your question, but you might find this visualisation of your data informative.

``````library(ggplot2)
qplot(Time, Score, data = myDat, geom = "line",
group = Subject, colour = factor(Condition))
``````

-
That is lovely! –  Dan Goldstein Sep 5 '09 at 10:47

(using lme4 library) This fits your subject effect as random and also the variable that your random effects are grouped under. In this model the random effect is the intercept varying by subject.

``````m <- lmer( Score ~ Condition + Time + (1|Subject), data=myDat )
``````

To see the random effects you can just use

``````ranef(m)
``````

As Ian Fellows mentioned, your data may also have random Condition and Time components. You can test that with another model. In the one below Condition, Time, and the intercept are allowed to vary randomly by subject. It also evaluates their correlations.

``````mi <- lmer( Score ~ Condition + Time + (Condition + Time|Subject), data=myDat )
``````

and try

``````summary(mi)
ranef(mi)
``````

You could also test for this without correlations with the intercept, with interactions between Condition and Time, and numerous other models to see which best fits your data and / or your theory. Your question is a bit vague but these few commands should get you started.

Note that Subject is your grouping factor so it's what you fit other effects as random under. It's not something you then explicitly fit as a predictor as well.

-
I'm going to leave the answer as is because ranef() works with mer objects usually. Unfortunately, in some versions it doesn't. In that case try myModel@ranef. –  John Aug 3 '11 at 16:44
can you send me an example (I'm googlable) of when `ranef` doesn't work with a `mer` object ... ?? –  Ben Bolker Oct 8 '11 at 15:31
when they update lme4 and forget to make it work.. :)... that was happening at the time I wrote that. –  John Oct 8 '11 at 16:43