This function fits GLMMs as well as some hierarchical generalized linear models (HGLM; Lee and Nelder 2001).
HLfit
fits both fixed effects parameters, and dispersion parameters i.e. the variance of the random effects (full covariance for random-coefficient models), and the variance of the residual error. The linear predictor is of the standard form offset+ X beta + Z b
, where X is the design matrix of fixed effects and Z is a design matrix of random effects (typically an incidence matrix with 0s and 1s, but not necessarily). Models are fitted by an iterative algorithm alternating estimation of fixed effects and of dispersion parameters. The residual dispersion may follow a “structured-dispersion model” modeling heteroscedasticity.
Estimation of the latter parameters is performed by a form of fit of debiased residuals, which allows fitting a structured-dispersion model (Smyth et al. 2001). However, evaluation of the debiased residuals can be slow in particular for large datasets. For models without structured dispersion, it is then worth using the fitme
function (or the corrHLfit
function with non-default arguments). These functions can optimize the likelihood of HLfit
fits for different given values of the dispersion parameters (“outer optimization”), thereby avoiding the need to estimate debiased residuals.
HLfit(formula, data, family = gaussian(), rand.family = gaussian(),
resid.model = ~1, REMLformula = NULL, verbose = c(trace = FALSE),
HLmethod = "HL(1,1)", method="REML", control.HLfit = list(),
control.glm = list(), init.HLfit = list(), ranFix = list(),
etaFix = list(), prior.weights = NULL, processed = NULL)
## see 'rand.family' argument for inverse.Gamma
A data frame containing the variables named in the model formula.
A family
object describing the distribution of the response variable. See Details in spaMM
for handled families.
A family
object describing the distribution of the random effect, or a list
of
family objects for different random effects (see Examples). Possible options are
gaussian()
, Gamma(log)
, Gamma(identity)
(see Details), Beta(logit)
, inverse.Gamma(-1/mu)
, and inverse.Gamma(log)
.
For discussion of these alternatives see Lee and Nelder 2001 or Lee et al. 2006, p. 178-.
Here the family gives the distribution of a random effect \(u\)
and the link gives v
as function of \(u\) (see Details).
If there are several random effects and only one family is given, this family holds for all random effects.
Either a formula (without left-hand side) for the dispersion parameter phi
of the residual error. A log link is assumed by default;
or a list, with at most three possible elements if its formula involves only fixed effects:
model formula as in formula-only case, without left-hand side
Always Gamma, with by default a log link. Gamma(identity)
can be tried but may fail because only the log link ensures that the fitted \(\phi\) is positive.
can be used to specify the residual dispersion parameter of the residual dispersion model itself. The default value is 1; this argument can be used to set another value, and fixed=list(phi=NA)
will force estimation of this parameter.
and additional possible elements (all named as fitme
arguments) if its formula involves random effects: see phiHGLM
.
A model formula
that allows the estimation of dispersion parameters, and
computation of restricted likelihood (p_bv
) under a model different from the predictor formula
.
For example, if only random effects are included in REMLformula
, an ML fit is performed and p_bv
equals
the marginal likelihood (or its approximation), p_v
. This ML fit can be performed more simply by setting
method="ML"
and leaving REMLformula
at its default NULL value.
A vector of booleans. trace
controls various diagnostic messages (possibly messy) about the iterations. TRACE=TRUE
is most useful to follow the progress of a long computation, particularly in fitme
or corrHLfit
calls, for which it displays some mysterious output for each set of correlation and dispersion parameter values considered by the optimiser. Non-boolean values of TRACE
are meaningful, but the source code of spaMM:::.do_TRACE
should be consulted for their meaning. phifit
(which defaults to TRUE
) controls messages about the progress of residual dispersion fits in DHGLMs.
Character: the fitting method.
allowed values are "REML"
, "ML"
, "EQL-"
and "EQL+"
for all models;
"PQL"
(="REPQL"
) and "PQL/L"
for GLMMs only; and further values
for those curious to experiment (see method
). The default is REML (standard REML for LMMs,
an extended definition for other models). REML can be viewed as a form of conditional inference, and non-standard conditionings can be called by using a non-standard REMLformula
.
Same as method
. It is useless to specify HLmethod
when method
is specified. The default value "HL(1,1)"
means the same as method="REML"
, but more accurately relates to definitions of approximations of likelihoo in the \(h\)-likelihood literature.
A list of parameters controlling the fitting algorithms, which should be ignored in routine use. In addition, a resid.family
parameter was previously documented here (before version 2.6.40), and will still operate as previously documented, but should not be used in new code.
Possible parameters are:
conv.threshold
and spaMM_tol
: spaMM_tol
is a list of tolerance values, with elements Xtol_rel
and Xtol_abs
that define thresholds for relative and absolute changes in parameter values in iterative algorithms (used in tests of the form “d(param)< Xtol_rel * param + Xtol_abs”, so that Xtol_abs
is operative only for small parameter values). conv.threshold
is the older way to control Xtol_rel
. Default values are given by spaMM.getOption("spaMM_tol");
break_conv_logL
, a boolean specifying whether the iterative algorithm should terminate when log-likelihood appears to have converged (roughly, when its relative variation over on iteration is lower than 1e-8). Default is FALSE (convergence is then assessed on the parameter estimates rather than on log-likelihood).
iter.mean.dispFix
, the number of iterations of the iterative algorithm for coefficients of the linear predictor,
if no dispersion parameters are estimated by the iterative algorithm. Defaults to 200 except for Gamma(log)-family models;
iter.mean.dispVar
, the number of iterations of the iterative algorithm for coefficients of the linear predictor,
if some dispersion parameter(s) is estimated by the iterative algorithm. Defaults to 50 except for Gamma(log)-family models;
max.iter
, the number of iterations of the iterative algorithm for joint estimation of dispersion parameters and
of coefficients of the linear predictor. Defaults to 200. This is typically much more than necessary,
unless there is little information to separately estimate \(\lambda\) and \(\phi\) parameters.
List of parameters controlling GLM fits, passed to glm.control
; e.g. control.glm=list(maxit=100)
. See glm.control
for further details.
A list of initial values for the iterative algorithm, with possible elements of the list are
fixef
for fixed effect estimates (beta),
v_h
for random effects vector v in the linear predictor,
lambda
for the parameter determining the variance of random effects \(u\) as drawn from the rand.family
distribution
phi
for the residual variance.
However, this argument can be ignored in routine use.
A list of fixed values of random effect parameters. See ranFix
for further information.
A list of given values of the coefficients of the linear predictor. See etaFix
for further information.
An optional vector of prior weights as in glm
. This fits the data to a probability model with residual variance phi/prior.weights
, and all further outputs are defined to be consistent with this (see section IV in Details).
A list of preprocessed arguments, for programming purposes only (as in corrHLfit
).
An object of class HLfit
, which is a list with many elements, not all of which are documented.
A few extractor functions are available (see extractors
),
and should be used as far as possible as they should be backward-compatible from version 1.4 onwards, while the structure of the return object may still evolve. The following information will be useful for extracting further elements of the object.
Elements include descriptors of the fit:
Fitted values on the linear scale (including the predicted random effects);
Fitted values (\(\mu=\)<inverse-link>(\(\eta\))) of the response variable (returned by the fitted
function);
The fixed effects coefficients, \(\beta\) (returned by the fixef
function);
The random effects \(u\) (returned by ranef(*,type="uncorrelated")
;
The random effects on the linear scale, \(v\);
The residual variance \(\phi\);
A possibly more complex object describing \(\phi\);
The random-effect (\(u\)) variance(s) \(\lambda\) in compact form;
A possibly more complex object describing \(\lambda\);
Agglomerates information on correlation parameters, either fixed, or estimated by HLfit
, corrHLfit
or fitme
;
A list which elements are various likelihood components, include conditional likelihood, h-likelihood, and the two adjusted profile h-likelihoods: the (approximate) marginal likelihood p_v
and the (approximate) restricted likelihood p_bv
(the latter two available through the logLik
function). See the extractor function get_any_IC
for information criteria (“AIC”) and effective degrees of freedom;
The covariance matrix of \(\beta\) estimates is not included as such, but can be extracted by vcov
;
Information about the input is contained in output elements named as HLfit or corrHLfit arguments (data,family,resid.family,ranFix,prior.weights), with the following notable exceptions or modifications:
The formula
, possibly reformatted;
Analogous to predictor
, for the residual variance;
corresponding to the rand.family
input;
Further miscellaneous diagnostics and descriptors of model structure:
The design matrix for fixed effects;
Two lists of matrices, respectively the design matrices “Z”, and the “L” matrices, for the different random-effect terms. The extractor get_ZALMatrix
can be used to reconstruct a single “ZL” matrix for all terms.
(binomial data only) the binomial denominators;
the response vector; for binomial data, the frequency response.
Additional information on model structure for \(\eta\), \(\lambda\) and \(\phi\);
A set of indices that characterize the approximations used for likelihood;
Leverages;
degrees of freedom for different components of the model;
A list of warnings for events that may have occurred during the fit.
Finally, the object includes programming tools: call, spaMM.version, fit_time and envir.
I. Approximations of likelihood: see method
.
II. Possible structure of Random effects: see random-effects
, but note that HLfit
does not fit models with autocorrelated random effects).
III. The standard errors reported may sometimes be misleading. For each set of parameters among \(\beta\), \(\lambda\), and \(\phi\) parameters these are computed assuming that the other parameters are known without error. This is why they are labelled Cond. SE
(conditional standard error). This is most uninformative in the unusual case where \(\lambda\) and \(\phi\) are not separately estimable parameters. Further, the SEs for \(\lambda\) and \(\phi\) are rough approximations as discussed in particular by Smyth et al. (2001; \(V_1\) method).
IV. prior weights. This controls the likelihood analysis of heteroscedastic models. In particular, changing the weights by a constant factor f should, and will, yield a fit with unchanged likelihood and (Intercept) estimates of phi
also increased by f (except if a non-trivial resid.formula
with log link is used). This is consistent with what glm
does, but other packages may not follow this logic (whatever their documentation may say: check by yourself by changing the weights by a constant factor).
Lee, Y., Nelder, J. A. (2001) Hierarchical generalised linear models: A synthesis of generalised linear models, random-effect models and structured dispersions. Biometrika 88, 987-1006.
Lee, Y., Nelder, J. A. and Pawitan, Y. (2006). Generalized linear models with random effects: unified analysis via h-likelihood. Chapman & Hall: London.
Smyth GK, Huele AF, Verbyla AP (2001). Exact and approximate REML for heteroscedastic regression. Statistical Modelling 1, 161-175.
HLCor
for estimation with given spatial correlation parameters;
corrHLfit
for joint estimation with spatial correlation parameters;
fitme
as an alternative to all these functions.
# NOT RUN {
data("wafers")
## Gamma GLMM with log link
# }
# NOT RUN {
<!-- % example also in main page... -->
# }
# NOT RUN {
HLfit(y ~ X1+X2+X1*X3+X2*X3+I(X2^2)+(1|batch), family=Gamma(log),
resid.model = ~ X3+I(X3^2) ,data=wafers)
# }
# NOT RUN {
<!-- %- : tested in update.Rd -->
# }
# NOT RUN {
## Gamma - inverseGamma HGLM with log link
HLfit(y ~ X1+X2+X1*X3+X2*X3+I(X2^2)+(1|batch), family=Gamma(log),
rand.family=inverse.Gamma(log),
resid.model = ~ X3+I(X3^2) , data=wafers)
# }
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