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VGAM (version 0.9-1)

studentt: Student t Distribution

Description

Estimation of parameters in a Student t distribution.

Usage

studentt(ldf = "loglog", idf = NULL, tol1 = 0.1, imethod = 1)
studentt2(df = Inf, llocation = "identity", lscale = "loge",
          ilocation = NULL, iscale = NULL, imethod = 1, zero = -2)
studentt3(llocation = "identity", lscale = "loge", ldf = "loglog",
          ilocation = NULL, iscale = NULL, idf = NULL,
          imethod = 1, zero = -(2:3))

Arguments

llocation, lscale, ldf
Parameter link functions for each parameter, e.g., for degrees of freedom $\nu$. See Links for more choices. The defaults ensures the parameters are in range. A l
ilocation, iscale, idf
Optional initial values. If given, the values must be in range. The default is to compute an initial value internally.
tol1
A positive value, the tolerance for testing whether an initial value is 1. Best to leave this argument alone.
df
Numeric, user-specified degrees of freedom. It may be of length equal to the number of columns of a response matrix.
imethod, zero

Value

  • An object of class "vglmff" (see vglmff-class). The object is used by modelling functions such as vglm, and vgam.

Details

The Student t density function is $$f(y;\nu) = \frac{\Gamma((\nu+1)/2)}{\sqrt{\nu \pi} \Gamma(\nu/2)} \left(1 + \frac{y^2}{\nu} \right)^{-(\nu+1)/2}$$ for all real $y$. Then $E(Y)=0$ if $\nu>1$ (returned as the fitted values), and $Var(Y)= \nu/(\nu-2)$ for $\nu > 2$. When $\nu=1$ then the Student $t$-distribution corresponds to the standard Cauchy distribution, cauchy1. When $\nu=2$ with a scale parameter of sqrt(2) then the Student $t$-distribution corresponds to the standard Koenker distribution, koenker. The degrees of freedom can be treated as a parameter to be estimated, and as a real and not an integer. The Student t distribution is used for a variety of reasons in statistics, including robust regression.

Let $Y = (T - \mu) / \sigma$ where $\mu$ and $\sigma$ are the location and scale parameters respectively. Then studentt3 estimates the location, scale and degrees of freedom parameters. And studentt2 estimates the location, scale parameters for a user-specified degrees of freedom, df. And studentt estimates the degrees of freedom parameter only. The fitted values are the location parameters. By default the linear/additive predictors are $(\mu, \log(\sigma), \log\log(\nu))^T$ or subsets thereof.

In general convergence can be slow, especially when there are covariates.

References

Student (1908) The probable error of a mean. Biometrika, 6, 1--25.

Zhu, D. and Galbraith, J. W. (2010) A generalized asymmetric Student-t distribution with application to financial econometrics. Journal of Econometrics, 157, 297--305.

See Also

normal1, cauchy1, logistic, huber2, koenker, TDist.

Examples

Run this code
tdata <- data.frame(x2 = runif(nn <- 1000))
tdata <- transform(tdata, y1 = rt(nn, df = exp(exp(0.5 - x2))),
                          y2 = rt(nn, df = exp(exp(0.5 - x2))))
fit1 <- vglm(y1 ~ x2, studentt, tdata, trace = TRUE)
coef(fit1, matrix = TRUE)

fit2 <- vglm(cbind(y1, y2) ~ x2, studentt3, tdata, trace = TRUE)
coef(fit2, matrix = TRUE)

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