Vector generalized linear model
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In statistics, the class of vector generalized linear models (VGLMs) was proposed to enlarge the scope of models catered for by generalized linear models (GLMs). In particular, VGLMs allow for response variables outside the classical exponential family and for more than one parameter. Each parameter (not necessarily a mean) can be transformed by a link function. The VGLM framework is also large enough to naturally accommodate multiple responses; these are several independent responses each coming from a particular statistical distribution with possibly different parameter values.
Vector generalized linear models are described in detail in Yee (2015).[1] The central algorithm adopted is the iteratively reweighted least squares method, for maximum likelihood estimation of usually all the model parameters. In particular, Fisher scoring is implemented by such, which, for most models, uses the first and expected second derivatives of the log-likelihood function.
Motivation
GLMs essentially cover one-parameter models from the classical exponential family, and include 3 of the most important statistical regression models: the linear model, Poisson regression for counts, and logistic regression for binary responses. However, the exponential family is far too limiting for regular data analysis. For example, for counts, zero-inflation, zero-truncation and overdispersion are regularly encountered, and the makeshift adaptations made to the binomial and Poisson models in the form of quasi-binomial and quasi-Poisson can be argued as being ad hoc and unsatisfactory. But the VGLM framework readily handles models such as zero-inflated Poisson regression, zero-altered Poisson (hurdle) regression, positive-Poisson regression, and negative binomial regression. As another example, for the linear model, the variance of a normal distribution is relegated as a scale parameter and it is treated often as a nuisance parameter (if it is considered as a parameter at all). But the VGLM framework allows the variance to be modelled using covariates.
As a whole, one can loosely think of VGLMs as GLMs that handle many models outside the classical exponential family and are not restricted to estimating a single mean. During estimation, rather than using weighted least squares during IRLS, one uses generalized least squares to handle the correlation between the M linear predictors.
Data and notation
We suppose that the response or outcome or the dependent variable(s), [math]\displaystyle{ \boldsymbol{y}=(y_1,\ldots,y_{Q_1})^T }[/math], are assumed to be generated from a particular distribution. Most distributions are univariate, so that [math]\displaystyle{ Q_1=1 }[/math], and an example of [math]\displaystyle{ Q_1=2 }[/math] is the bivariate normal distribution.
Sometimes we write our data as [math]\displaystyle{ (\boldsymbol{x}_{i},w_i,\boldsymbol{y}_{i}) }[/math] for [math]\displaystyle{ i=1,\ldots,n }[/math]. Each of the n observations are considered to be independent. Then [math]\displaystyle{ \boldsymbol{y}_i = (y_{i1},\ldots,y_{iQ_1})^T }[/math]. The [math]\displaystyle{ w_{i} }[/math] are known positive prior weights, and often [math]\displaystyle{ w_{i}=1 }[/math].
The explanatory or independent variables are written [math]\displaystyle{ \boldsymbol{x}=(x_1,\ldots,x_p)^T }[/math], or when i is needed, as [math]\displaystyle{ \boldsymbol{x}_i = (x_{i1},\ldots,x_{ip})^T }[/math]. Usually there is an intercept, in which case [math]\displaystyle{ x_1 = 1 }[/math] or [math]\displaystyle{ x_{i1} = 1 }[/math].
Actually, the VGLM framework allows for S responses, each of dimension [math]\displaystyle{ Q_1 }[/math].
In the above S = 1. Hence the dimension of [math]\displaystyle{ \boldsymbol{y}_{i} }[/math] is more generally [math]\displaystyle{ Q = S \times Q_1 }[/math]. One handles S responses by code such
as vglm(cbind(y1, y2, y3) ~ x2 + x3, ..., data = mydata)
for S = 3.
To simplify things, most of this article has S = 1.
Model components
The VGLM usually consists of four elements:
- 1. A probability density function or probability mass function from some statistical distribution which has a log-likelihood [math]\displaystyle{ \ell }[/math], first derivatives [math]\displaystyle{ \partial \ell / \partial \theta_j }[/math] and expected information matrix that can be computed. The model is required to satisfy the usual MLE regularity conditions.
- 2. Linear predictors [math]\displaystyle{ \eta_j }[/math] described below to model each parameter [math]\displaystyle{ \theta_j }[/math], [math]\displaystyle{ j=1,\ldots,M. }[/math]
- 3. Link functions [math]\displaystyle{ g_j }[/math] such that [math]\displaystyle{ \theta_j = g_j^{-1}(\eta_j). }[/math]
- 4. Constraint matrices [math]\displaystyle{ \boldsymbol{H}_k }[/math] for [math]\displaystyle{ k=1,\ldots,p, }[/math] each of full column-rank and known.
Linear predictors
Each linear predictor is a quantity which incorporates information about the independent variables into the model. The symbol [math]\displaystyle{ \eta_j }[/math] (Greek "eta") denotes a linear predictor and a subscript j is used to denote the jth one. It relates the jth parameter to the explanatory variables, and [math]\displaystyle{ \eta_j }[/math] is expressed as linear combinations (thus, "linear") of unknown parameters [math]\displaystyle{ \boldsymbol{\beta}_j, }[/math] i.e., of regression coefficients [math]\displaystyle{ \beta_{(j)k} }[/math].
The jth parameter, [math]\displaystyle{ \theta_j }[/math], of the distribution depends on the independent variables, [math]\displaystyle{ \boldsymbol{x}, }[/math] through
- [math]\displaystyle{ g_j( \theta_j) = \eta_j = \boldsymbol{\beta}_j^T \boldsymbol{x}. }[/math]
Let [math]\displaystyle{ \boldsymbol{\eta} = (\eta_1, \ldots, \eta_M)^T }[/math] be the vector of all the linear predictors. (For convenience we always let [math]\displaystyle{ \boldsymbol{\eta} }[/math] be of dimension M). Thus all the covariates comprising [math]\displaystyle{ \boldsymbol{x} }[/math] potentially affect all the parameters through the linear predictors [math]\displaystyle{ \eta_j }[/math]. Later, we will allow the linear predictors to be generalized to additive predictors, which is the sum of smooth functions of each [math]\displaystyle{ x_k }[/math] and each function is estimated from the data.
Link functions
Each link function provides the relationship between a linear predictor and a
parameter of the distribution.
There are many commonly used link functions, and their choice can be somewhat arbitrary. It makes sense to try to match the domain of the link function to
the range of the distribution's parameter value.
Notice above that the [math]\displaystyle{ g_j }[/math] allows a different link function for each parameter.
They have similar properties as with generalized linear models, for example,
common link functions include the logit link for parameters in [math]\displaystyle{ (0, 1) }[/math],
and the log link for positive parameters. The VGAM
package has function identitylink()
for parameters that can assume both positive and negative values.
Constraint matrices
More generally, the VGLM framework allows for any linear constraints between the regression coefficients [math]\displaystyle{ \beta_{(j)k} }[/math] of each linear predictors. For example, we may want to set some to be equal to 0, or constraint some of them to be equal. We have
- [math]\displaystyle{ \boldsymbol{\eta} = \sum_{k=1}^p \, \boldsymbol{\beta}^{}_{(k)} \, x_{k} = \sum_{k=1}^p \, \boldsymbol{H}_k \; \boldsymbol{\beta}^{*}_{(k)} \, x_{k} }[/math]
where the [math]\displaystyle{ \boldsymbol{H}_k }[/math] are the constraint matrices. Each constraint matrix is known and prespecified, and has M rows, and between 1 and M columns. The elements of constraint matrices are finite-valued, and often they are just 0 or 1. For example, the value 0 effectively omits that element while a 1 includes it. It is common for some models to have a parallelism assumption, which means that [math]\displaystyle{ \boldsymbol{H}_k = \boldsymbol{1}_M }[/math] for [math]\displaystyle{ k=2,\ldots,p }[/math], and for some models, for [math]\displaystyle{ k=1 }[/math] too. The special case when [math]\displaystyle{ \boldsymbol{H}_k = \boldsymbol{I}_M }[/math] for all [math]\displaystyle{ k=1,\ldots,p }[/math] is known as trivial constraints; all the regression coefficients are estimated and are unrelated. And [math]\displaystyle{ \theta_j }[/math] is known as an intercept-only parameter if the jth row of all the [math]\displaystyle{ \boldsymbol{H}_k = }[/math] are equal to [math]\displaystyle{ \boldsymbol{0}^T }[/math] for [math]\displaystyle{ k=2,\ldots,p }[/math], i.e., [math]\displaystyle{ \eta_j = \beta_{(j)1}^{*} }[/math] equals an intercept only. Intercept-only parameters are thus modelled as simply as possible, as a scalar.
The unknown parameters, [math]\displaystyle{ \boldsymbol{\beta}^{*} = (\boldsymbol{\beta}_{(1)}^{*T},\ldots,\boldsymbol{\beta}_{(p)}^{*T})^T }[/math], are typically estimated by the method of maximum likelihood. All the regression coefficients may be put into a matrix as follows:
- [math]\displaystyle{ \boldsymbol{\eta}_i = \boldsymbol{B}^T \boldsymbol{x}_i = \begin{pmatrix} \boldsymbol{\beta}^{T}_{1} \, \boldsymbol{x}_i \\ \vdots \\ \boldsymbol{\beta}^{T}_{M} \, \boldsymbol{x}_i \\ \end{pmatrix} = \left( \boldsymbol{\beta}^{}_{(1)}, \ldots, \boldsymbol{\beta}^{}_{(p)} \right) \; \boldsymbol{x}_i. }[/math]
The xij facility
With even more generally, one can allow the value of a variable [math]\displaystyle{ x_k }[/math]
to have a different value for each [math]\displaystyle{ \eta_j }[/math].
For example, if each linear predictor is for a different time point then
one might have a time-varying covariate.
For example,
in discrete choice models, one has
conditional logit models,
nested logit models,
generalized logit models,
and the like, to distinguish between certain variants and
fit a multinomial logit model to, e.g., transport choices.
A variable such as cost differs depending on the choice, for example,
taxi is more expensive than bus, which is more expensive than walking.
The xij
facility of VGAM
allows one to
generalize [math]\displaystyle{ \eta_j(\boldsymbol{x}_i) }[/math]
to [math]\displaystyle{ \eta_j(\boldsymbol{x}_{ij}) }[/math].
The most general formula is
- [math]\displaystyle{ \boldsymbol{\eta}_i = \boldsymbol{o}_i + \sum_{k=1}^{p} \, diag(x_{ik1},\ldots,x_{ikM}) \, \mathbf{H}_k \, \boldsymbol{\beta}_{(k)}^{*}. }[/math]
Here the [math]\displaystyle{ \boldsymbol{o}_i }[/math] is an optional offset; which translates
to be a [math]\displaystyle{ n \times M }[/math] matrix in practice.
The VGAM
package has an xij
argument that allows
the successive elements of the diagonal matrix to be inputted.
Software
Yee (2015)[1] describes an R package
implementation in the
called VGAM.[2]
Currently this software fits approximately 150 models/distributions.
The central modelling functions are vglm()
and vgam()
.
The family
argument is assigned a VGAM family function,
e.g., family = negbinomial
for negative binomial regression,
family = poissonff
for Poisson regression,
family = propodds
for the proportional odd model or
cumulative logit model for ordinal categorical regression.
Fitting
Maximum likelihood
We are maximizing a log-likelihood
- [math]\displaystyle{ \ell = \sum_{i=1}^{n} \, w_i \, \ell_i, }[/math]
where the [math]\displaystyle{ w_i }[/math] are positive and known prior weights. The maximum likelihood estimates can be found using an iteratively reweighted least squares algorithm using Fisher's scoring method, with updates of the form:
- [math]\displaystyle{ \boldsymbol\beta^{(a+1)} = \boldsymbol\beta^{(a)} + \boldsymbol{\mathcal{I}}^{-1}(\boldsymbol\beta^{(a)}) \, \, \mathbf{u}(\boldsymbol\beta^{(a)}), }[/math]
where [math]\displaystyle{ \boldsymbol{\mathcal{I}}(\boldsymbol\beta^{(a)}) }[/math] is the Fisher information matrix at iteration a. It is also called the expected information matrix, or EIM.
VLM
For the computation, the (small) model matrix constructed
from the RHS of the formula in vglm()
and the constraint matrices are combined to form a big model matrix.
The IRLS is applied to this big X. This matrix is known as the VLM
matrix, since the vector linear model is the underlying least squares
problem being solved. A VLM is a weighted multivariate regression where the
variance-covariance matrix for each row of the response matrix is not
necessarily the same, and is known.
(In classical multivariate regression, all the errors have the
same variance-covariance matrix, and it is unknown).
In particular, the VLM minimizes the weighted sum of squares
- [math]\displaystyle{ \mathrm{ResSS} = \sum_{i=1}^{n} \; w_i \left\{ \mathbf{z}^{(a-1)}_{i} - \boldsymbol{\eta}^{(a-1)}_{i} \right\}^T \mathbf{W}_{i}^{(a-1)} \left\{ \mathbf{z}^{(a-1)}_{i} - \boldsymbol{\eta}^{(a-1)}_{i} \right\} }[/math]
This quantity is minimized at each IRLS iteration. The working responses (also known as pseudo-response and adjusted dependent vectors) are
- [math]\displaystyle{ \mathbf{z}_i = \boldsymbol{\eta}_i + \mathbf{W}_i^{-1} \mathbf{u}_i, }[/math]
where the [math]\displaystyle{ \mathbf{W}_i }[/math] are known as working weights or working weight matrices. They are symmetric and positive-definite. Using the EIM helps ensure that they are all positive-definite (and not just the sum of them) over much of the parameter space. In contrast, using Newton–Raphson would mean the observed information matrices would be used, and these tend to be positive-definite in a smaller subset of the parameter space.
Computationally, the Cholesky decomposition is used to invert the working weight matrices and to convert the overall generalized least squares problem into an ordinary least squares problem.
Examples
Generalized linear models
Of course, all generalized linear models are a special cases of VGLMs. But we often estimate all parameters by full maximum likelihood estimation rather than using the method of moments for the scale parameter.
Ordered categorical response
If the response variable is an ordinal measurement with M + 1 levels, then one may fit a model function of the form:
- [math]\displaystyle{ g(\theta_j) = \eta_j }[/math] where [math]\displaystyle{ \theta_j = \mathrm{Pr}(Y \leq j), }[/math]
for [math]\displaystyle{ j=1,\ldots,M. }[/math]
Different links g lead to proportional odds models or ordered probit models,
e.g., the VGAM
family function cumulative(link = probit)
assigns a probit link to the cumulative
probabilities, therefore this model is also called the cumulative probit model.
In general they are called cumulative link models.
For categorical and multinomial distributions, the fitted values are an (M + 1)-vector of probabilities, with the property that all probabilities add up to 1. Each probability indicates the likelihood of occurrence of one of the M + 1 possible values.
Unordered categorical response
If the response variable is a nominal measurement, or the data do not satisfy the assumptions of an ordered model, then one may fit a model of the following form:
- [math]\displaystyle{ \log \left[ \frac{Pr(Y = j)}{\mathrm{Pr}(Y = M+1)} \right] = \eta_j, }[/math]
for [math]\displaystyle{ j=1,\ldots,M. }[/math] The above link is sometimes called the multilogit link,
and the model is called the multinomial logit model.
It is common to choose the first or the last level of the response as the
reference or baseline group; the above uses the last level.
The VGAM
family function multinomial()
fits the above model,
and it has an argument called refLevel
that can be assigned
the level used for as the reference group.
Count data
Classical GLM theory performs Poisson regression for count data. The link is typically the logarithm, which is known as the canonical link. The variance function is proportional to the mean:
- [math]\displaystyle{ \operatorname{Var}(Y_{i}) = \tau\mu_{i},\, }[/math]
where the dispersion parameter [math]\displaystyle{ \tau }[/math] is typically fixed at exactly one. When it is not, the resulting quasi-likelihood model is often described as Poisson with overdispersion, or quasi-Poisson; then [math]\displaystyle{ \tau }[/math] is commonly estimated by the method-of-moments and as such, confidence intervals for [math]\displaystyle{ \tau }[/math] are difficult to obtain.
In contrast, VGLMs offer a much richer set of models to handle overdispersion with respect to the Poisson, e.g., the negative binomial distribution and several variants thereof. Another count regression model is the generalized Poisson distribution. Other possible models are the zeta distribution and the Zipf distribution.
Extensions
Reduced-rank vector generalized linear models
RR-VGLMs are VGLMs where a subset of the B matrix is of a lower rank. Without loss of generality, suppose that [math]\displaystyle{ \boldsymbol{x}=(\boldsymbol{x}_1^T, \boldsymbol{x}_2^T)^T }[/math] is a partition of the covariate vector. Then the part of the B matrix corresponding to [math]\displaystyle{ \boldsymbol{x}_2 }[/math] is of the form [math]\displaystyle{ \boldsymbol{A} \boldsymbol{C}^T }[/math] where [math]\displaystyle{ \boldsymbol{A} }[/math] and [math]\displaystyle{ \boldsymbol{C} }[/math] are thin matrices (i.e., with R columns), e.g., vectors if the rank R = 1. RR-VGLMs potentially offer several advantages when applied to certain models and data sets. Firstly, if M and p are large then the number of regression coefficients that are estimated by VGLMs is large ([math]\displaystyle{ M \times p }[/math]). Then RR-VGLMs can reduce the number of estimated regression coefficients enormously if R is low, e.g., R = 1 or R = 2. An example of a model where this is particularly useful is the RR-multinomial logit model, also known as the stereotype model. Secondly, [math]\displaystyle{ \boldsymbol{\nu} = \boldsymbol{C}^T \boldsymbol{x}_2 = (\nu_1,\ldots,\nu_R)^T }[/math] is an R-vector of latent variables, and often these can be usefully interpreted. If R = 1 then we can write [math]\displaystyle{ \nu = \boldsymbol{c}^T \boldsymbol{x}_2 }[/math] so that the latent variable comprises loadings on the explanatory variables. It may be seen that RR-VGLMs take optimal linear combinations of the [math]\displaystyle{ \boldsymbol{x}_2 }[/math] and then a VGLM is fitted to the explanatory variables [math]\displaystyle{ (\boldsymbol{x}_1, \boldsymbol{\nu}) }[/math]. Thirdly, a biplot can be produced if R = 2 , and this allows the model to be visualized.
It can be shown that RR-VGLMs are simply VGLMs where the constraint matrices for the variables in [math]\displaystyle{ \boldsymbol{x}_2 }[/math] are unknown and to be estimated. It then transpires that [math]\displaystyle{ \boldsymbol{H}_k = \boldsymbol{A} }[/math] for such variables. RR-VGLMs can be estimated by an alternating algorithm which fixes [math]\displaystyle{ \boldsymbol{A} }[/math] and estimates [math]\displaystyle{ \boldsymbol{C}, }[/math] and then fixes [math]\displaystyle{ \boldsymbol{C} }[/math] and estimates [math]\displaystyle{ \boldsymbol{A} }[/math], etc.
In practice, some uniqueness constraints are needed for [math]\displaystyle{ \boldsymbol{A} }[/math]
and/or [math]\displaystyle{ \boldsymbol{C} }[/math]. In VGAM
, the rrvglm()
function uses corner constraints by default, which means that the top R rows of [math]\displaystyle{ \boldsymbol{A} }[/math] is set to [math]\displaystyle{ \boldsymbol{I}_R }[/math]. RR-VGLMs were proposed in 2003.[3]
Two to one
A special case of RR-VGLMs is when R = 1 and M = 2. This is dimension reduction from 2 parameters to 1 parameter. Then it can be shown that
- [math]\displaystyle{ \theta_2 = g_2^{-1} \left( t_1 + a_{21} \cdot g_1(\theta_1) \right), }[/math]
where elements [math]\displaystyle{ t_1 }[/math] and [math]\displaystyle{ a_{21} }[/math] are estimated. Equivalently,
- [math]\displaystyle{ \eta_2 = t_1 + a_{21} \cdot \eta_1. }[/math]
This formula provides a coupling of [math]\displaystyle{ \eta_1 }[/math] and [math]\displaystyle{ \eta_2 }[/math]. It induces a relationship between two parameters of a model that can be useful, e.g., for modelling a mean-variance relationship. Sometimes there is some choice of link functions, therefore it offers a little flexibility when coupling the two parameters, e.g., a logit, probit, cauchit or cloglog link for parameters in the unit interval. The above formula is particularly useful for the negative binomial distribution, so that the RR-NB has variance function
- [math]\displaystyle{ \operatorname{Var}(Y\mid\boldsymbol{x}) = \mu(\boldsymbol{x}) + \delta_1 \, \mu(\boldsymbol{x})^{\delta_2}. }[/math]
This has been called the NB-P variant by some authors. The [math]\displaystyle{ \delta_1 }[/math] and [math]\displaystyle{ \delta_2 }[/math] are estimated, and it is also possible to obtain approximate confidence intervals for them too.
Incidentally, several other useful NB variants can also be fitted, with the help of selecting the right combination of constraint matrices. For example, NB − 1, NB − 2 (negbinomial()
default), NB − H; see Yee (2014)[4] and Table 11.3 of Yee (2015).[1]
RCIMs
The subclass of row-column interaction models
(RCIMs) has also been proposed; these are a special type of RR-VGLM.
RCIMs apply only to a matrix Y response and there are
no explicit explanatory variables [math]\displaystyle{ \boldsymbol{x} }[/math].
Instead, indicator variables for each row and column are explicitly set up, and an order-R
interaction of the form [math]\displaystyle{ \boldsymbol{A} \boldsymbol{C}^T }[/math] is allowed.
Special cases of this type of model include the Goodman RC association model
and the quasi-variances methodology as implemented by the qvcalc
R package.
RCIMs can be defined as a RR-VGLM applied to Y with
- [math]\displaystyle{ g_1(\theta_1) \equiv \eta_{1ij} = \beta_0 + \alpha_i + \gamma_j + \sum_{r=1}^R c_{ir} \, a_{jr} . }[/math]
For the Goodman RC association model, we have [math]\displaystyle{ \eta_{1ij}=\log \mu_{ij}, }[/math] so that if R = 0 then it is a Poisson regression fitted to a matrix of counts with row effects and column effects; this has a similar idea to a no-interaction two-way ANOVA model.
Another example of a RCIM is if [math]\displaystyle{ g_1 }[/math] is the identity link and the parameter is the median and the model corresponds to an asymmetric Laplace distribution; then a no-interaction RCIM is similar to a technique called median polish.
In VGAM
, rcim()
and grc()
functions fit the above models.
And also Yee and Hadi (2014)[5]
show that RCIMs can be used to fit unconstrained quadratic ordination
models to species data; this is an example of indirect gradient analysis in
ordination (a topic in statistical ecology).
Vector generalized additive models
Vector generalized additive models (VGAMs) are a major extension to VGLMs in which the linear predictor [math]\displaystyle{ \eta_j }[/math] is not restricted to be linear in the covariates [math]\displaystyle{ x_k }[/math] but is the sum of smoothing functions applied to the [math]\displaystyle{ x_k }[/math]:
- [math]\displaystyle{ \boldsymbol{\eta}(\boldsymbol{x}) = \boldsymbol{H}_1 \, \boldsymbol{\beta}_{(1)}^{*} + \boldsymbol{H}_2 \, \boldsymbol{f}_{(2)}^{*}(x_2) + \boldsymbol{H}_3 \, \boldsymbol{f}_{(3)}^{*}(x_3) + \cdots \,\! }[/math]
where [math]\displaystyle{ \boldsymbol{f}_{(k)}^{*}(x_k) = (f_{(1)k}^{*}(x_k),f_{(2)k}^{*}(x_k),\ldots)^T. }[/math]
These are M additive predictors.
Each smooth function [math]\displaystyle{ f_{(j)k}^{*} }[/math] is estimated from the data.
Thus VGLMs are model-driven while VGAMs are data-driven.
Currently, only smoothing splines are implemented in the VGAM
package.
For M > 1 they are actually vector splines, which estimate the component functions
in [math]\displaystyle{ f_{(j)k}^{*}(x_k) }[/math] simultaneously.
Of course, one could use regression splines with VGLMs.
The motivation behind VGAMs is similar to
that of
Hastie and Tibshirani (1990)[6]
and
Wood (2017).[7]
VGAMs were proposed in 1996
.[8]
Currently, work is being done to estimate VGAMs using P-splines of Eilers and Marx (1996) .[9] This allows for several advantages over using smoothing splines and vector backfitting, such as the ability to perform automatic smoothing parameter selection easier.
Quadratic reduced-rank vector generalized linear models
These add on a quadratic in the latent variable to the RR-VGLM class. The result is a bell-shaped curve can be fitted to each response, as a function of the latent variable. For R = 2, one has bell-shaped surfaces as a function of the 2 latent variables---somewhat similar to a bivariate normal distribution. Particular applications of QRR-VGLMs can be found in ecology, in a field of multivariate analysis called ordination.
As a specific rank-1 example of a QRR-VGLM, consider Poisson data with S species. The model for Species s is the Poisson regression
- [math]\displaystyle{ \log\,\mu_s(\nu) = \eta_s(\nu) = \beta_{(s)1} + \beta_{(s)2} \, \nu + \beta_{(s)3} \, \nu^2 = \alpha_s - \frac{1}{2} \left( \frac{\nu -u_s}{t_s} \right)^2, }[/math]
for [math]\displaystyle{ s=1,\ldots,S }[/math]. The right-most parameterization which uses the symbols [math]\displaystyle{ \alpha_s, }[/math] [math]\displaystyle{ u_s, }[/math] [math]\displaystyle{ t_s, }[/math] has particular ecological meaning, because they relate to the species abundance, optimum and tolerance respectively. For example, the tolerance is a measure of niche width, and a large value means that that species can live in a wide range of environments. In the above equation, one would need [math]\displaystyle{ \beta_{(s)3}\lt 0 }[/math] in order to obtain a bell-shaped curve.
QRR-VGLMs fit Gaussian ordination models by maximum likelihood estimation, and
they are an example of direct gradient analysis.
The cqo()
function in the VGAM
package currently
calls optim()
to search for the optimal
[math]\displaystyle{ \boldsymbol{C} }[/math], and given that, it is easy to calculate
the site scores and fit a suitable generalized linear model to that.
The function is named after the acronym CQO, which stands for
constrained quadratic ordination: the constrained is for direct
gradient analysis (there are environmental variables, and a linear combination
of these is taken as the latent variable) and the quadratic is for the
quadratic form in the latent variables [math]\displaystyle{ \boldsymbol{\nu} }[/math]
on the [math]\displaystyle{ \boldsymbol{\eta} }[/math] scale.
Unfortunately QRR-VGLMs are sensitive to outliers in both the response
and explanatory variables, as well as being computationally expensive, and
may give a local solution rather than a global solution.
QRR-VGLMs were proposed in 2004.[10]
See also
- generalized linear models
- R (software)
- Regression analysis
- Statistical model
- Natural exponential family
References
- ↑ 1.0 1.1 1.2 Yee, T. W. (2015). Vector Generalized Linear and Additive Models: With an Implementation in R. New York, USA: Springer. ISBN 978-1-4939-2817-0.
- ↑ "Vector Generalized Linear Models". 2016-01-18. http://cran.R-project.org/package=VGAM.
- ↑ Yee, T. W.; Hastie, T. J. (2003). "Reduced-rank vector generalized linear models". Statistical Modelling 3 (1): 15–41. doi:10.1191/1471082x03st045oa.
- ↑ Yee, T. W. (1996). "Reduced-rank vector generalized linear models with two linear predictors". Computational Statistics & Data Analysis 71: 889–902. doi:10.1016/j.csda.2013.01.012.
- ↑ Yee, T. W.; Hadi, A. F. (2014). "Row-column interaction models, with an R implementation". Computational Statistics 29 (6): 1427–1445. doi:10.1007/s00180-014-0499-9.
- ↑ Hastie, T. J.; Tibshirani, R. J. (1990). Generalized Additive Models. London:Chapman and Hall.
- ↑ Wood, S. N. (2017). Generalized Additive Models: An Introduction with R (second ed.). London: Chapman and Hall. ISBN 9781498728331.
- ↑ Yee, T. W.; Wild, C. J. (1996). "Vector generalized additive models". Journal of the Royal Statistical Society, Series B 58 (3): 481–493.
- ↑ Eilers, P. H. C.; Marx, B. D. (1996). "Flexible smoothing with B-splines and penalties". Statistical Science 11 (2): 89–121. doi:10.1214/ss/1038425655.
- ↑ Yee, T. W. (2004). "A new technique for maximum-likelihood canonical Gaussian ordination". Ecological Monographs 74 (4): 685–701. doi:10.1890/03-0078.
Further reading
- Hilbe, Joseph (2011). Negative Binomial Regression (2nd ed.). Cambridge: Cambridge University Press. ISBN 978-0-521-19815-8.
Original source: https://en.wikipedia.org/wiki/Vector generalized linear model.
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