Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

In glm in R, the default link functions for the Gamma family are inverse,identity and log. Now for my particular question, I need to use gamma regression with response Y and a modified link function in the form of log(E(Y)-1)). Thus, I consider modifying some glm-related functions in R. There are several functions that may be relevant, and I am seeking help for anyone who had previous experience in doing this.

For example, the functions Gamma is defined as

function (link = "inverse") 
{
  linktemp <- substitute(link)
  if (!is.character(linktemp)) 
    linktemp <- deparse(linktemp)
  okLinks <- c("inverse", "log", "identity")
  if (linktemp %in% okLinks) 
    stats <- make.link(linktemp)
  else if (is.character(link)) 
    stats <- make.link(link)
  else {
    if (inherits(link, "link-glm")) {
      stats <- link
      if (!is.null(stats$name)) 
        linktemp <- stats$name
    }
    else {
      stop(gettextf("link \"%s\" not available for gamma family; available links are %s", 
                    linktemp, paste(sQuote(okLinks), collapse = ", ")), 
           domain = NA)
    }
  }
  variance <- function(mu) mu^2
  validmu <- function(mu) all(mu > 0)
  dev.resids <- function(y, mu, wt) -2 * wt * (log(ifelse(y == 
                                                            0, 1, y/mu)) - (y - mu)/mu)
  aic <- function(y, n, mu, wt, dev) {
    n <- sum(wt)
    disp <- dev/n
    -2 * sum(dgamma(y, 1/disp, scale = mu * disp, log = TRUE) * 
               wt) + 2
  }
  initialize <- expression({
    if (any(y <= 0)) stop("non-positive values not allowed for the 'gamma' family")
    n <- rep.int(1, nobs)
    mustart <- y
  })
  simfun <- function(object, nsim) {
    wts <- object$prior.weights
    if (any(wts != 1)) 
      message("using weights as shape parameters")
    ftd <- fitted(object)
    shape <- MASS::gamma.shape(object)$alpha * wts
    rgamma(nsim * length(ftd), shape = shape, rate = shape/ftd)
  }
  structure(list(family = "Gamma", link = linktemp, linkfun = stats$linkfun, 
                 linkinv = stats$linkinv, variance = variance, dev.resids = dev.resids, 
                 aic = aic, mu.eta = stats$mu.eta, initialize = initialize, 
                 validmu = validmu, valideta = stats$valideta, simulate = simfun), 
            class = "family")
}

Also, in order to use the command glm(y ~ log(mu), family = Gamma(link = MyLink)), do I also need to modify the glm.fit function? Thank you!


Updates and New Question

According to @Ben Bolker's comments, we need to write a new link function called vlog (with real name "log(exp(y)-1)"). I find that the make.link function might be responsible for such a modification. It is defined as

function (link) 
{
  switch(link, logit = {
    linkfun <- function(mu) .Call(C_logit_link, mu)
    linkinv <- function(eta) .Call(C_logit_linkinv, eta)
    mu.eta <- function(eta) .Call(C_logit_mu_eta, eta)
    valideta <- function(eta) TRUE
  }, 

  ...

  }, log = {
    linkfun <- function(mu) log(mu)
    linkinv <- function(eta) pmax(exp(eta), .Machine$double.eps)
    mu.eta <- function(eta) pmax(exp(eta), .Machine$double.eps)
    valideta <- function(eta) TRUE
  }, 

  ...

  structure(list(linkfun = linkfun, linkinv = linkinv, mu.eta = mu.eta, 
                 valideta = valideta, name = link), class = "link-glm")
}

My question is: if we want to permanently add this link function vlog to glm, so that in each R session, we can use glm(y~x,family=Gamma(link="log(exp(y)-1)")) directly, shall we use the fix(make.link) and then add the definition of vlog to its body? Or fix() can only do that in current R session? Thanks again!

One more thing: I realize that maybe another function needs to be modified. It is Gamma, defined as

function (link = "inverse") 
{
  linktemp <- substitute(link)
  if (!is.character(linktemp)) 
    linktemp <- deparse(linktemp)
  okLinks <- c("inverse", "log", "identity")
  if (linktemp %in% okLinks) 
    stats <- make.link(linktemp)
  else if (is.character(link)) 
    stats <- make.link(link)
  else {
    if (inherits(link, "link-glm")) {
      stats <- link
      if (!is.null(stats$name)) 
        linktemp <- stats$name
    }
    else {
      stop(gettextf("link \"%s\" not available for gamma family; available links are %s", 
                    linktemp, paste(sQuote(okLinks), collapse = ", ")), 
           domain = NA)
    }
  }
  variance <- function(mu) mu^2
  validmu <- function(mu) all(mu > 0)
  dev.resids <- function(y, mu, wt) -2 * wt * (log(ifelse(y == 
                                                            0, 1, y/mu)) - (y - mu)/mu)
  aic <- function(y, n, mu, wt, dev) {
    n <- sum(wt)
    disp <- dev/n
    -2 * sum(dgamma(y, 1/disp, scale = mu * disp, log = TRUE) * 
               wt) + 2
  }
  initialize <- expression({
    if (any(y <= 0)) stop("non-positive values not allowed for the 'gamma' family")
    n <- rep.int(1, nobs)
    mustart <- y
  })
  simfun <- function(object, nsim) {
    wts <- object$prior.weights
    if (any(wts != 1)) 
      message("using weights as shape parameters")
    ftd <- fitted(object)
    shape <- MASS::gamma.shape(object)$alpha * wts
    rgamma(nsim * length(ftd), shape = shape, rate = shape/ftd)
  }
  structure(list(family = "Gamma", link = linktemp, linkfun = stats$linkfun, 
                 linkinv = stats$linkinv, variance = variance, dev.resids = dev.resids, 
                 aic = aic, mu.eta = stats$mu.eta, initialize = initialize, 
                 validmu = validmu, valideta = stats$valideta, simulate = simfun), 
            class = "family")
}

I think we also need to revise

okLinks <- c("inverse", "log", "identity")

to

okLinks <- c("inverse", "log", "identity", "log(exp(y)-1)")

?

share|improve this question
    
I don't understand all this extra complexity. I show the example below where the alternate-link model can be fitted via glm(...,family=Gamma(link=vlog()) as long as vlog has been defined. You can put vlog in a .R file and source() it in every session, or create a small package that defines the function. If you want you can also put it in your R profile, but it would probably be more transparent to just source("vlog.R") in every R script where you are going to use it. I don't think Gamma() needs to be modified (again, see my answer). –  Ben Bolker Apr 10 '13 at 21:15
    
I guess if you insist on calling the link function by name you would have to do all that extra hacking you describe above, but I don't see what's wrong with family=Gamma(link=vlog()) ... –  Ben Bolker Apr 10 '13 at 21:17
    
@BenBolker: Yes, I tried your codes and they work perfectly! Maybe my extra question is more general about fixing an R function to include user-defined options permanently. I will include the vlog function in my package. Thanks again for your help ;-) –  alittleboy Apr 10 '13 at 21:22
    
I would say you should copy the function from the R source code (so that you get any relevant comments included) and incorporate it in a package you load, which will mask the base versions. That's a sufficiently different task that you should probably pose it as a separate question. –  Ben Bolker Apr 10 '13 at 21:42
    
@BenBolker: yep -- I will post it as a separate question ;-) –  alittleboy Apr 10 '13 at 22:14

1 Answer 1

up vote 4 down vote accepted

I'm basically following the form of the example in ?family which shows a user-specified link of the form qlogis(mu^(1/days)).

We want a link of the form eta = log(exp(y)-1) (so the inverse link is y=log(exp(eta)+1), and mu.eta = dy/d(eta) = 1/(1+exp(-eta))

vlog <- function() {
    ## link
    linkfun <- function(y) log(exp(y)-1)
    ## inverse link
    linkinv <- function(eta)  log(exp(eta)+1)
    ## derivative of invlink wrt eta
    mu.eta <- function(eta) { 1/(exp(-eta) + 1) }
    valideta <- function(eta) TRUE
    link <- "log(exp(y)-1)"
    structure(list(linkfun = linkfun, linkinv = linkinv,
                   mu.eta = mu.eta, valideta = valideta, 
                   name = link),
              class = "link-glm")
}

Basic checks:

vv <- vlog()
vv$linkfun(vv$linkinv(27))  ## check invertibility
library("numDeriv")
all.equal(grad(vv$linkinv,2),vv$mu.eta(2))  ## check derivative

Example:

set.seed(101)
n <- 1000                       
x <- runif(n)
sh <- 2                        
y <- rgamma(n,scale=vv$linkinv(2+3*x)/sh,shape=sh)
glm(y~x,family=Gamma(link=vv))                       
## 
## Call:  glm(formula = y ~ x, family = Gamma(link = vv))
## 
## Coefficients:
## (Intercept)            x  
##       1.956        3.083  
## 
## Degrees of Freedom: 999 Total (i.e. Null);  998 Residual
## Null Deviance:       642.2 
## Residual Deviance: 581.8     AIC: 4268 
## 
share|improve this answer
    
Thank you so much for the comments! I have one more question and updated my original post. Hope you could help me with that question, too ;-) –  alittleboy Apr 10 '13 at 20:44

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.