In the present vignette, we want to discuss how to specify multivariate multilevel models using brms. We call a model multivariate if it contains multiple response variables, each being predicted by its own set of predictors. Consider an example from biology. Hadfield, Nutall, Osorio, and Owens (2007) analyzed data of the Eurasian blue tit (https://en.wikipedia.org/wiki/Eurasian_blue_tit). They predicted the tarsus
length as well as the back
color of chicks. Half of the brood were put into another fosternest
, while the other half stayed in the fosternest of their own dam
. This allows to separate genetic from environmental factors. Additionally, we have information about the hatchdate
and sex
of the chicks (the latter being known for 94% of the animals).
tarsus back animal dam fosternest hatchdate sex
1 -1.89229718 1.1464212 R187142 R187557 F2102 -0.6874021 Fem
2 1.13610981 -0.7596521 R187154 R187559 F1902 -0.6874021 Male
3 0.98468946 0.1449373 R187341 R187568 A602 -0.4279814 Male
4 0.37900806 0.2555847 R046169 R187518 A1302 -1.4656641 Male
5 -0.07525299 -0.3006992 R046161 R187528 A2602 -1.4656641 Fem
6 -1.13519543 1.5577219 R187409 R187945 C2302 0.3502805 Fem
We begin with a relatively simple multivariate normal model.
fit1 <- brm(
mvbind(tarsus, back) ~ sex + hatchdate + (1|p|fosternest) + (1|q|dam),
data = BTdata, chains = 2, cores = 2
)
As can be seen in the model code, we have used mvbind
notation to tell brms that both tarsus
and back
are separate response variables. The term (1|p|fosternest)
indicates a varying intercept over fosternest
. By writing |p|
in between we indicate that all varying effects of fosternest
should be modeled as correlated. This makes sense since we actually have two model parts, one for tarsus
and one for back
. The indicator p
is arbitrary and can be replaced by other symbols that comes into your mind (for details about the multilevel syntax of brms, see help("brmsformula")
and vignette("brms_multilevel")
). Similarily, the term (1|q|dam)
indicates correlated varying effects of the genetic mother of the chicks. Alternatively, we could have also modeled the genetic similarities through pedigrees and corresponding relatedness matrices, but this is not the focus of this vignette (please see vignette("brms_phylogenetics")
). The model results are readily summarized via
Family: MV(gaussian, gaussian)
Links: mu = identity; sigma = identity
mu = identity; sigma = identity
Formula: tarsus ~ sex + hatchdate + (1 | p | fosternest) + (1 | q | dam)
back ~ sex + hatchdate + (1 | p | fosternest) + (1 | q | dam)
Data: BTdata (Number of observations: 828)
Samples: 2 chains, each with iter = 2000; warmup = 1000; thin = 1;
total post-warmup samples = 2000
Group-Level Effects:
~dam (Number of levels: 106)
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS
sd(tarsus_Intercept) 0.48 0.05 0.39 0.58 1.01 687
sd(back_Intercept) 0.25 0.07 0.11 0.39 1.01 307
cor(tarsus_Intercept,back_Intercept) -0.51 0.22 -0.92 -0.06 1.00 383
Tail_ESS
sd(tarsus_Intercept) 1183
sd(back_Intercept) 730
cor(tarsus_Intercept,back_Intercept) 446
~fosternest (Number of levels: 104)
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS
sd(tarsus_Intercept) 0.27 0.05 0.16 0.38 1.00 547
sd(back_Intercept) 0.35 0.06 0.24 0.46 1.01 413
cor(tarsus_Intercept,back_Intercept) 0.69 0.20 0.24 0.98 1.01 174
Tail_ESS
sd(tarsus_Intercept) 1059
sd(back_Intercept) 1073
cor(tarsus_Intercept,back_Intercept) 478
Population-Level Effects:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
tarsus_Intercept -0.40 0.07 -0.54 -0.27 1.00 1052 1431
back_Intercept -0.01 0.06 -0.14 0.11 1.00 1784 1453
tarsus_sexMale 0.77 0.06 0.66 0.88 1.00 2644 1233
tarsus_sexUNK 0.22 0.13 -0.02 0.47 1.00 2940 1633
tarsus_hatchdate -0.04 0.06 -0.16 0.07 1.00 786 942
back_sexMale 0.01 0.06 -0.12 0.14 1.00 2758 1723
back_sexUNK 0.15 0.15 -0.14 0.44 1.00 2472 1694
back_hatchdate -0.09 0.05 -0.19 0.01 1.00 1670 1665
Family Specific Parameters:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
sigma_tarsus 0.75 0.02 0.72 0.80 1.00 2296 1530
sigma_back 0.90 0.02 0.85 0.95 1.00 2263 1413
Residual Correlations:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
rescor(tarsus,back) -0.05 0.04 -0.13 0.02 1.00 2115 1631
Samples were drawn using sampling(NUTS). For each parameter, Eff.Sample
is a crude measure of effective sample size, and Rhat is the potential
scale reduction factor on split chains (at convergence, Rhat = 1).
The summary output of multivariate models closely resembles those of univariate models, except that the parameters now have the corresponding response variable as prefix. Within dams, tarsus length and back color seem to be negatively correlated, while within fosternests the opposite is true. This indicates differential effects of genetic and environmental factors on these two characteristics. Further, the small residual correlation rescor(tarsus, back)
on the bottom of the output indicates that there is little unmodeled dependency between tarsus length and back color. Although not necessary at this point, we have already computed and stored the LOO information criterion of fit1
, which we will use for model comparions. Next, let’s take a look at some posterior-predictive checks, which give us a first impression of the model fit.
This looks pretty solid, but we notice a slight unmodeled left skewness in the distribution of tarsus
. We will come back to this later on. Next, we want to investigate how much variation in the response variables can be explained by our model and we use a Bayesian generalization of the \(R^2\) coefficient.
Estimate Est.Error Q2.5 Q97.5
R2tarsus 0.4337887 0.02302780 0.3898364 0.4784660
R2back 0.1993632 0.02743055 0.1470984 0.2530174
Clearly, there is much variation in both animal characteristics that we can not explain, but apparently we can explain more of the variation in tarsus length than in back color.
Now, suppose we only want to control for sex
in tarsus
but not in back
and vice versa for hatchdate
. Not that this is particular reasonable for the present example, but it allows us to illustrate how to specify different formulas for different response variables. We can no longer use mvbind
syntax and so we have to use a more verbose approach:
bf_tarsus <- bf(tarsus ~ sex + (1|p|fosternest) + (1|q|dam))
bf_back <- bf(back ~ hatchdate + (1|p|fosternest) + (1|q|dam))
fit2 <- brm(bf_tarsus + bf_back, data = BTdata, chains = 2, cores = 2)
Note that we have literally added the two model parts via the +
operator, which is in this case equivalent to writing mvbf(bf_tarsus, bf_back)
. See help("brmsformula")
and help("mvbrmsformula")
for more details about this syntax. Again, we summarize the model first.
Family: MV(gaussian, gaussian)
Links: mu = identity; sigma = identity
mu = identity; sigma = identity
Formula: tarsus ~ sex + (1 | p | fosternest) + (1 | q | dam)
back ~ hatchdate + (1 | p | fosternest) + (1 | q | dam)
Data: BTdata (Number of observations: 828)
Samples: 2 chains, each with iter = 2000; warmup = 1000; thin = 1;
total post-warmup samples = 2000
Group-Level Effects:
~dam (Number of levels: 106)
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS
sd(tarsus_Intercept) 0.48 0.05 0.39 0.58 1.00 619
sd(back_Intercept) 0.25 0.07 0.12 0.39 1.01 259
cor(tarsus_Intercept,back_Intercept) -0.50 0.22 -0.91 -0.04 1.00 321
Tail_ESS
sd(tarsus_Intercept) 1187
sd(back_Intercept) 542
cor(tarsus_Intercept,back_Intercept) 543
~fosternest (Number of levels: 104)
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS
sd(tarsus_Intercept) 0.27 0.05 0.16 0.38 1.00 519
sd(back_Intercept) 0.35 0.06 0.23 0.46 1.00 387
cor(tarsus_Intercept,back_Intercept) 0.67 0.21 0.18 0.97 1.01 199
Tail_ESS
sd(tarsus_Intercept) 866
sd(back_Intercept) 479
cor(tarsus_Intercept,back_Intercept) 428
Population-Level Effects:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
tarsus_Intercept -0.41 0.07 -0.54 -0.28 1.00 822 1133
back_Intercept -0.00 0.05 -0.11 0.10 1.00 1040 1458
tarsus_sexMale 0.77 0.06 0.66 0.88 1.00 2341 1423
tarsus_sexUNK 0.22 0.13 -0.04 0.47 1.00 1978 1413
back_hatchdate -0.08 0.05 -0.18 0.02 1.00 936 1290
Family Specific Parameters:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
sigma_tarsus 0.76 0.02 0.72 0.80 1.00 1592 1110
sigma_back 0.90 0.02 0.85 0.95 1.00 1827 1337
Residual Correlations:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
rescor(tarsus,back) -0.05 0.04 -0.13 0.02 1.00 2075 1559
Samples were drawn using sampling(NUTS). For each parameter, Eff.Sample
is a crude measure of effective sample size, and Rhat is the potential
scale reduction factor on split chains (at convergence, Rhat = 1).
Let’s find out, how model fit changed due to excluding certain effects from the initial model:
Output of model 'fit1':
Computed from 2000 by 828 log-likelihood matrix
Estimate SE
elpd_loo -2125.5 33.6
p_loo 175.5 7.3
looic 4251.0 67.2
------
Monte Carlo SE of elpd_loo is 0.4.
Pareto k diagnostic values:
Count Pct. Min. n_eff
(-Inf, 0.5] (good) 810 97.8% 288
(0.5, 0.7] (ok) 18 2.2% 90
(0.7, 1] (bad) 0 0.0% <NA>
(1, Inf) (very bad) 0 0.0% <NA>
All Pareto k estimates are ok (k < 0.7).
See help('pareto-k-diagnostic') for details.
Output of model 'fit2':
Computed from 2000 by 828 log-likelihood matrix
Estimate SE
elpd_loo -2124.8 33.6
p_loo 174.6 7.4
looic 4249.7 67.2
------
Monte Carlo SE of elpd_loo is NA.
Pareto k diagnostic values:
Count Pct. Min. n_eff
(-Inf, 0.5] (good) 811 97.9% 272
(0.5, 0.7] (ok) 16 1.9% 70
(0.7, 1] (bad) 1 0.1% 1368
(1, Inf) (very bad) 0 0.0% <NA>
See help('pareto-k-diagnostic') for details.
Model comparisons:
elpd_diff se_diff
fit2 0.0 0.0
fit1 -0.7 1.3
Apparently, there is no noteworthy difference in the model fit. Accordingly, we do not really need to model sex
and hatchdate
for both response variables, but there is also no harm in including them (so I would probably just include them).
To give you a glimpse of the capabilities of brms’ multivariate syntax, we change our model in various directions at the same time. Remember the slight left skewness of tarsus
, which we will now model by using the skew_normal
family instead of the gaussian
family. Since we do not have a multivariate normal (or student-t) model, anymore, estimating residual correlations is no longer possible. We make this explicit using the set_rescor
function. Further, we investigate if the relationship of back
and hatchdate
is really linear as previously assumed by fitting a non-linear spline of hatchdate
. On top of it, we model separate residual variances of tarsus
for males and femals chicks.
bf_tarsus <- bf(tarsus ~ sex + (1|p|fosternest) + (1|q|dam)) +
lf(sigma ~ 0 + sex) + skew_normal()
bf_back <- bf(back ~ s(hatchdate) + (1|p|fosternest) + (1|q|dam)) +
gaussian()
fit3 <- brm(
bf_tarsus + bf_back + set_rescor(FALSE),
data = BTdata, chains = 2, cores = 2,
control = list(adapt_delta = 0.95)
)
Again, we summarize the model and look at some posterior-predictive checks.
Family: MV(skew_normal, gaussian)
Links: mu = identity; sigma = log; alpha = identity
mu = identity; sigma = identity
Formula: tarsus ~ sex + (1 | p | fosternest) + (1 | q | dam)
sigma ~ 0 + sex
back ~ s(hatchdate) + (1 | p | fosternest) + (1 | q | dam)
Data: BTdata (Number of observations: 828)
Samples: 2 chains, each with iter = 2000; warmup = 1000; thin = 1;
total post-warmup samples = 2000
Smooth Terms:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
sds(back_shatchdate_1) 2.48 1.37 0.46 5.66 1.00 407 447
Group-Level Effects:
~dam (Number of levels: 106)
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS
sd(tarsus_Intercept) 0.47 0.05 0.37 0.57 1.00 392
sd(back_Intercept) 0.23 0.07 0.08 0.37 1.00 211
cor(tarsus_Intercept,back_Intercept) -0.51 0.23 -0.92 -0.05 1.00 400
Tail_ESS
sd(tarsus_Intercept) 797
sd(back_Intercept) 230
cor(tarsus_Intercept,back_Intercept) 418
~fosternest (Number of levels: 104)
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS
sd(tarsus_Intercept) 0.26 0.05 0.16 0.38 1.00 432
sd(back_Intercept) 0.31 0.06 0.20 0.42 1.00 443
cor(tarsus_Intercept,back_Intercept) 0.64 0.21 0.17 0.97 1.02 157
Tail_ESS
sd(tarsus_Intercept) 804
sd(back_Intercept) 535
cor(tarsus_Intercept,back_Intercept) 499
Population-Level Effects:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
tarsus_Intercept -0.41 0.07 -0.54 -0.28 1.00 933 1225
back_Intercept 0.00 0.05 -0.10 0.10 1.00 1350 1438
tarsus_sexMale 0.77 0.06 0.66 0.88 1.00 2451 1408
tarsus_sexUNK 0.22 0.12 -0.01 0.45 1.00 2151 1455
sigma_tarsus_sexFem -0.30 0.04 -0.39 -0.21 1.00 2695 1352
sigma_tarsus_sexMale -0.25 0.04 -0.33 -0.16 1.00 2235 1581
sigma_tarsus_sexUNK -0.40 0.13 -0.64 -0.13 1.00 2184 1496
back_shatchdate_1 0.07 3.57 -6.06 8.30 1.00 856 1093
Family Specific Parameters:
Estimate Est.Error l-95% CI u-95% CI Rhat Bulk_ESS Tail_ESS
sigma_back 0.90 0.02 0.86 0.95 1.00 2016 1457
alpha_tarsus -1.19 0.44 -1.87 0.10 1.00 665 444
Samples were drawn using sampling(NUTS). For each parameter, Eff.Sample
is a crude measure of effective sample size, and Rhat is the potential
scale reduction factor on split chains (at convergence, Rhat = 1).
We see that the (log) residual standard deviation of tarsus
is somewhat larger for chicks whose sex could not be identified as compared to male or female chicks. Further, we see from the negative alpha
(skewness) parameter of tarsus
that the residuals are indeed slightly left-skewed. Lastly, running
reveals a non-linear relationship of hatchdate
on the back
color, which seems to change in waves over the course of the hatch dates.
There are many more modeling options for multivariate models, which are not discussed in this vignette. Examples include autocorrelation structures, Gaussian processes, or explicit non-linear predictors (e.g., see help("brmsformula")
or vignette("brms_multilevel")
). In fact, nearly all the flexibility of univariate models is retained in multivariate models.
Hadfield JD, Nutall A, Osorio D, Owens IPF (2007). Testing the phenotypic gambit: phenotypic, genetic and environmental correlations of colour. Journal of Evolutionary Biology, 20(2), 549-557.