The goal of mvgam
is to fit Bayesian Dynamic Generalized
Additive Models to time series data. The motivation for the package is
described in Clark & Wells 2022 (published in Methods in
Ecology and Evolution), with additional inspiration on the use of
Bayesian probabilistic modelling coming from
Michael
Betancourt,
Michael Dietze and
Emily Fox,
among many others.
A series of vignettes cover data formatting, forecasting and several extended case studies of DGAMs. A number of other examples have also been compiled:
mgcv
and mvgam
mgcv
Install the stable version from CRAN
using:
install.packages('mvgam')
, or install the development
version from GitHub
using:
devtools::install_github("nicholasjclark/mvgam")
. Note that
to condition models on observed data, either JAGS
(along
with packages rjags
and runjags
) or
Stan
must be installed (along with either
rstan
and/or cmdstanr
). Please refer to
installation links for JAGS
here, for Stan
with rstan
here, or for Stan
with
cmdstandr
here. You
will need a fairly recent version of Stan
to ensure all
syntax is recognized. If you see warnings such as
variable "array" does not exist
, this is usually a sign
that you need to update Stan
.
We highly recommend you use Cmdstan
through the
cmdstanr
interface. This is because Cmdstan
is
easier to install, is more up to date with new features, and uses less
memory than rstan
. See this documentation from the Cmdstan
team
for more information.
mvgam
and
related softwareWhen using any software please make sure to appropriately acknowledge the hard work that developers and maintainers put into making these packages available. Citations are currently the best way to formally acknowledge this work, so we highly encourage you to cite any packages that you rely on for your research.
When using mvgam
, please cite the following:
As mvgam
acts as an interface to Stan
and
JAGS
, please additionally cite whichever software you use
for parameter estimation:
mvgam
relies on several other R
packages
and, of course, on R
itself. To find out how to cite R and
its packages, use the citation
function. There are some
features of mvgam
which specifically rely on certain
packages. The most important of these is the generation of data
necessary to estimate smoothing splines, which entirely rely on
mgcv
. The rstan
and cmdstanr
packages together with Rcpp
makes Stan
conveniently accessible in R
, while the rjags
and runjags
packages together with the coda
package make JAGS
accessible in R
. If you use
some of these features, please also consider citing the related
packages.
mvgam
for fitting Generalized Additive Models to time
seriesWe can explore the model’s primary functions using a dataset that is
available with all R
installations. Load the
lynx
data and plot the series as well as its
autocorrelation function
data(lynx)
<- data.frame(year = 1821:1934,
lynx_full population = as.numeric(lynx))
plot(lynx_full$population, type = 'l', ylab = 'Lynx trappings',
xlab = 'Time', bty = 'l', lwd = 2)
box(bty = 'l', lwd = 2)
acf(lynx_full$population, main = '', bty = 'l', lwd = 2,
ci.col = 'darkred')
box(bty = 'l', lwd = 2)
Along with serial autocorrelation, there is a clear ~19-year cyclic
pattern. Create a season
term that can be used to model
this effect and give a better representation of the data generating
process than we would likely get with a linear model
plot(stl(ts(lynx_full$population, frequency = 19), s.window = 'periodic'),
lwd = 2, col.range = 'darkred')
$season <- (lynx_full$year%%19) + 1 lynx_full
For mvgam
models, we need an indicator of the series
name as a factor
(if the column series
is
missing, this will be added automatically by assuming that all
observations are from a single time series). A time
column
is needed to index time
$time <- 1:NROW(lynx_full)
lynx_full$series <- factor('series1') lynx_full
Split the data into training (first 50 years) and testing (next 10 years of data) to evaluate forecasts
= lynx_full[1:50, ]
lynx_train = lynx_full[51:60, ] lynx_test
Inspect the series in a bit more detail using mvgam
’s
plotting utility
plot_mvgam_series(data = lynx_train, y = 'population')
Formulate an mvgam
model; this model fits a GAM in which
a cyclic smooth function for season
is estimated jointly
with a full time series model for the temporal process (in this case an
AR1
process). We assume the outcome follows a Poisson
distribution and will condition the model in Stan
using
MCMC sampling with the Cmdstan
interface:
<- mvgam(population ~ s(season, bs = 'cc', k = 12),
lynx_mvgam knots = list(season = c(0.5, 19.5)),
data = lynx_train,
newdata = lynx_test,
family = poisson(),
trend_model = AR(p = 1),
backend = 'cmdstanr')
Have a look at this model’s summary to see what is being estimated. Note that no pathological behaviours have been detected and we achieve good effective sample sizes / mixing for all parameters
summary(lynx_mvgam)
#> GAM formula:
#> population ~ s(season, bs = "cc", k = 12)
#>
#> Family:
#> poisson
#>
#> Link function:
#> log
#>
#> Trend model:
#> AR(p = 1)
#>
#> N series:
#> 1
#>
#> N timepoints:
#> 60
#>
#> Status:
#> Fitted using Stan
#> 4 chains, each with iter = 1000; warmup = 500; thin = 1
#> Total post-warmup draws = 2000
#>
#>
#> GAM coefficient (beta) estimates:
#> 2.5% 50% 97.5% Rhat n_eff
#> (Intercept) 6.400 6.60 6.900 1.00 961
#> s(season).1 -0.650 -0.14 0.380 1.00 984
#> s(season).2 0.730 1.30 1.900 1.00 1113
#> s(season).3 1.300 1.90 2.500 1.00 727
#> s(season).4 -0.054 0.53 1.100 1.00 727
#> s(season).5 -1.300 -0.70 -0.069 1.00 919
#> s(season).6 -1.200 -0.55 0.170 1.00 1012
#> s(season).7 0.012 0.73 1.400 1.00 1134
#> s(season).8 0.600 1.40 2.100 1.01 756
#> s(season).9 -0.410 0.22 0.810 1.00 710
#> s(season).10 -1.400 -0.87 -0.350 1.00 1164
#>
#> Approximate significance of GAM smooths:
#> edf Ref.df Chi.sq p-value
#> s(season) 9.95 10 53.4 <2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#>
#> Latent trend parameter AR estimates:
#> 2.5% 50% 97.5% Rhat n_eff
#> ar1[1] 0.59 0.83 0.99 1.00 519
#> sigma[1] 0.38 0.48 0.60 1.01 485
#>
#> Stan MCMC diagnostics:
#> n_eff / iter looks reasonable for all parameters
#> Rhat looks reasonable for all parameters
#> 0 of 2000 iterations ended with a divergence (0%)
#> 0 of 2000 iterations saturated the maximum tree depth of 12 (0%)
#> E-FMI indicated no pathological behavior
#>
#> Samples were drawn using NUTS(diag_e) at Tue Sep 03 1:56:36 PM 2024.
#> For each parameter, n_eff is a crude measure of effective sample size,
#> and Rhat is the potential scale reduction factor on split MCMC chains
#> (at convergence, Rhat = 1)
As with any MCMC software, we can inspect traceplots. Here for the
GAM smoothing parameters, using mvgam
’s reliance on the
excellent bayesplot
library:
mcmc_plot(lynx_mvgam, variable = 'rho', regex = TRUE, type = 'trace')
#> No divergences to plot.
and for the latent trend parameters
mcmc_plot(lynx_mvgam, variable = 'trend_params', regex = TRUE, type = 'trace')
#> No divergences to plot.
Use posterior predictive checks, which capitalize on the extensive
functionality of the bayesplot
package, to see if the model
can simulate data that looks realistic and unbiased. First, examine
histograms for posterior retrodictions (yhat
) and compare
to the histogram of the observations (y
)
pp_check(lynx_mvgam, type = "hist", ndraws = 5)
#> `stat_bin()` using `bins = 30`. Pick better value with `binwidth`.
Next examine simulated empirical Cumulative Distribution Functions (CDF) for posterior predictions
pp_check(lynx_mvgam, type = "ecdf_overlay", ndraws = 25)
Rootograms are
popular
graphical tools for checking a discrete model’s ability to capture
dispersion properties of the response variable. Posterior predictive
hanging rootograms can be displayed using the ppc()
function. In the plot below, we bin the unique observed values into
25
bins to prevent overplotting and help with
interpretation. This plot compares the frequencies of observed vs
predicted values for each bin. For example, if the gray bars
(representing observed frequencies) tend to stretch below zero, this
suggests the model’s simulations predict the values in that particular
bin less frequently than they are observed in the data. A well-fitting
model that can generate realistic simulated data will provide a
rootogram in which the lower boundaries of the grey bars are generally
near zero. For this plot we use the S3
function
ppc.mvgam()
, which is not as versatile as
pp_check()
but allows us to bin rootograms to avoid
overplotting
ppc(lynx_mvgam, type = "rootogram", n_bins = 25)
All plots indicate the model is well calibrated against the training data. Inspect the estimated cyclic smooth, which is shown as a ribbon plot of posterior empirical quantiles. We can also overlay posterior quantiles of partial residuals (shown in red), which represent the leftover variation that the model expects would remain if this smooth term was dropped but all other parameters remained unchanged. A strong pattern in the partial residuals suggests there would be strong patterns left unexplained in the model if we were to drop this term, giving us further confidence that this function is important in the model
plot(lynx_mvgam, type = 'smooths', residuals = TRUE)
First derivatives of smooths can be plotted to inspect how the slope
of the function changes. To plot these we use the more flexible
plot_mvgam_smooth()
function
plot_mvgam_smooth(lynx_mvgam, series = 1,
smooth = 'season',
derivatives = TRUE)
If you have the gratia
package installed, it can also be
used to plot partial effects of smooths on the link scale
require(gratia)
#> Loading required package: gratia
#> Warning: package 'gratia' was built under R version 4.2.3
#>
#> Attaching package: 'gratia'
#> The following object is masked from 'package:mvgam':
#>
#> add_residuals
draw(lynx_mvgam)
As for many types of regression models, it is often more useful to
plot model effects on the outcome scale. mvgam
has support
for the wonderful marginaleffects
package, allowing a wide
variety of posterior contrasts, averages, conditional and marginal
predictions to be calculated and plotted. Below is the conditional
effect of season plotted on the outcome scale, for example:
require(ggplot2); require(marginaleffects)
#> Loading required package: marginaleffects
plot_predictions(lynx_mvgam, condition = 'season', points = 0.5) +
theme_classic()
We can also view the mvgam
’s posterior predictions for
the entire series (testing and training)
plot(lynx_mvgam, type = 'forecast', newdata = lynx_test)
#> Out of sample DRPS:
#> 2356.32008125
And the estimated latent trend component, again using the more
flexible plot_mvgam_...()
option to show first derivatives
of the estimated trend
plot_mvgam_trend(lynx_mvgam, newdata = lynx_test, derivatives = TRUE)
A key aspect of ecological forecasting is to understand how different components of a model contribute to
forecast uncertainty. We can estimate relative contributions to
forecast uncertainty for the GAM component and the latent trend
component using mvgam
plot_mvgam_uncertainty(lynx_mvgam, newdata = lynx_test, legend_position = 'none')
text(1, 0.2, cex = 1.5, label="GAM component",
pos = 4, col="white", family = 'serif')
text(1, 0.8, cex = 1.5, label="Trend component",
pos = 4, col="#7C0000", family = 'serif')
Both components contribute to forecast uncertainty. Diagnostics of
the model can also be performed using mvgam
. Have a look at
the model’s residuals, which are posterior empirical quantiles of
Dunn-Smyth randomised quantile residuals so should follow approximate
normality. We are primarily looking for a lack of autocorrelation, which
would suggest our AR1 model is appropriate for the latent trend
plot(lynx_mvgam, type = 'residuals')
mvgam
was originally designed to analyse and forecast
non-negative integer-valued data. These data are traditionally
challenging to analyse with existing time-series analysis packages. But
further development of mvgam
has resulted in support for a
growing number of observation families. Currently, the package can
handle data for the following:
gaussian()
for real-valued datastudent_t()
for heavy-tailed real-valued datalognormal()
for non-negative real-valued dataGamma()
for non-negative real-valued databetar()
for proportional data on
(0,1)
bernoulli()
for binary datapoisson()
for count datanb()
for overdispersed count databinomial()
for count data with known number of
trialsbeta_binomial()
for overdispersed count data with known
number of trialsnmix()
for count data with imperfect detection (unknown
number of trials)tweedie()
for overdispersed count dataNote that only poisson()
, nb()
, and
tweedie()
are available if using JAGS
. All
families, apart from tweedie()
, are supported if using
Stan
. See ??mvgam_families
for more
information. Below is a simple example for simulating and modelling
proportional data with Beta
observations over a set of
seasonal series with independent Gaussian Process dynamic trends:
set.seed(100)
<- sim_mvgam(family = betar(),
data T = 80,
trend_model = 'GP',
prop_trend = 0.5,
seasonality = 'shared')
plot_mvgam_series(data = data$data_train, series = 'all')
<- mvgam(y ~ s(season, bs = 'cc', k = 7) +
mod s(season, by = series, m = 1, k = 5),
trend_model = 'GP',
data = data$data_train,
newdata = data$data_test,
family = betar())
Inspect the summary to see that the posterior now also contains
estimates for the Beta
precision parameters \(\phi\). We can suppress a summary of the
\(\beta\) coefficients, which is useful
when there are many spline coefficients to report:
summary(mod, include_betas = FALSE)
#> GAM formula:
#> y ~ s(season, bs = "cc", k = 7) + s(season, by = series, m = 1,
#> k = 5)
#>
#> Family:
#> beta
#>
#> Link function:
#> logit
#>
#> Trend model:
#> GP
#>
#> N series:
#> 3
#>
#> N timepoints:
#> 80
#>
#> Status:
#> Fitted using Stan
#> 4 chains, each with iter = 1000; warmup = 500; thin = 1
#> Total post-warmup draws = 2000
#>
#>
#> Observation precision parameter estimates:
#> 2.5% 50% 97.5% Rhat n_eff
#> phi[1] 5.4 8.3 12 1 2019
#> phi[2] 5.7 8.7 13 1 1795
#> phi[3] 5.5 8.4 12 1 1680
#>
#> GAM coefficient (beta) estimates:
#> 2.5% 50% 97.5% Rhat n_eff
#> (Intercept) -0.18 0.19 0.45 1.01 757
#>
#> Approximate significance of GAM smooths:
#> edf Ref.df Chi.sq p-value
#> s(season) 4.231 5 28.89 2.6e-06 ***
#> s(season):seriesseries_1 0.687 4 0.69 0.98
#> s(season):seriesseries_2 0.664 4 0.60 0.99
#> s(season):seriesseries_3 1.286 4 1.39 0.82
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#>
#> Latent trend marginal deviation (alpha) and length scale (rho) estimates:
#> 2.5% 50% 97.5% Rhat n_eff
#> alpha_gp[1] 0.06 0.41 0.96 1.00 823
#> alpha_gp[2] 0.38 0.73 1.30 1.00 1073
#> alpha_gp[3] 0.15 0.45 0.98 1.00 903
#> rho_gp[1] 1.10 3.90 14.00 1.01 302
#> rho_gp[2] 1.70 7.00 32.00 1.01 364
#> rho_gp[3] 1.30 4.80 22.00 1.01 373
#>
#> Stan MCMC diagnostics:
#> n_eff / iter looks reasonable for all parameters
#> Rhat looks reasonable for all parameters
#> 18 of 2000 iterations ended with a divergence (0.9%)
#> *Try running with larger adapt_delta to remove the divergences
#> 0 of 2000 iterations saturated the maximum tree depth of 12 (0%)
#> E-FMI indicated no pathological behavior
#>
#> Samples were drawn using NUTS(diag_e) at Tue Sep 03 1:57:57 PM 2024.
#> For each parameter, n_eff is a crude measure of effective sample size,
#> and Rhat is the potential scale reduction factor on split MCMC chains
#> (at convergence, Rhat = 1)
Plot the hindcast and forecast distributions for each series
layout(matrix(1:4, nrow = 2, byrow = TRUE))
for(i in 1:3){
plot(mod, type = 'forecast', series = i)
}
There are many more extended uses of mvgam
, including
the ability to fit hierarchical GAMs that include dynamic coefficient
models, dynamic factor and Vector Autoregressive processes. See the
package documentation for more details. The package
can also be used to generate all necessary data structures, initial
value functions and modelling code necessary to fit DGAMs using
Stan
or JAGS
. This can be helpful if users
wish to make changes to the model to better suit their own bespoke
research / analysis goals. The following resources can be helpful to
troubleshoot:
This project is licensed under an MIT
open source
license
I’m actively seeking PhD students and other researchers to work in
the areas of ecological forecasting, multivariate model evaluation and
development of mvgam
. Please reach out if you are
interested (n.clark’at’uq.edu.au)