Fits a bivariate probit model to two binary responses. The correlation parameter rho is the measure of dependency.
binom2.rho(lmu = "probit", lrho = "rhobit", imu1 = NULL, imu2 = NULL,
irho = NULL, imethod = 1, zero = "rho",
exchangeable = FALSE, grho = seq(-0.95, 0.95, by = 0.05),
nsimEIM = NULL)
binom2.Rho(rho = 0, imu1 = NULL, imu2 = NULL,
exchangeable = FALSE, nsimEIM = NULL)
Link function applied to the marginal probabilities. Should be left alone.
Link function applied to the \(\rho\) association parameter.
See Links
for more choices.
Optional initial values for the two marginal probabilities. May be a vector.
Optional initial value for \(\rho\). If given, this should lie between \(-1\) and \(1\). See below for more comments.
Specifies which linear/additive predictors are modelled as intercept-only.
A NULL
means none.
Numerically, the \(\rho\) parameter is easiest modelled as
an intercept only, hence the default.
See CommonVGAMffArguments
for more information.
Logical.
If TRUE
, the two marginal probabilities are constrained to
be equal.
See CommonVGAMffArguments
for more information.
A value of at least 100 for nsimEIM
is recommended;
the larger the value the better.
Numeric vector. Values are recycled to the needed length, and ought to be in range, which is \((-1, 1)\).
An object of class "vglmff"
(see
vglmff-class
). The object is used by modelling
functions such as vglm
, and vgam
.
When fitted, the fitted.values
slot of the object
contains the four joint probabilities, labelled as
\((Y_1,Y_2)\) = (0,0), (0,1), (1,0), (1,1),
respectively.
The bivariate probit model was one of the earliest regression models to handle two binary responses jointly. It has a probit link for each of the two marginal probabilities, and models the association between the responses by the \(\rho\) parameter of a standard bivariate normal distribution (with zero means and unit variances). One can think of the joint probabilities being \(\Phi(\eta_1,\eta_2;\rho)\) where \(\Phi\) is the cumulative distribution function of a standard bivariate normal distribution.
Explicitly, the default model is $$probit[P(Y_j=1)] = \eta_j,\ \ \ j=1,2$$ for the marginals, and $$rhobit[rho] = \eta_3.$$ The joint probability \(P(Y_1=1,Y_2=1)=\Phi(\eta_1,\eta_2;\rho)\), and from these the other three joint probabilities are easily computed. The model is fitted by maximum likelihood estimation since the full likelihood is specified. Fisher scoring is implemented.
The default models \(\eta_3\) as a single parameter only,
i.e., an intercept-only model for rho, but this can be
circumvented by setting zero = NULL
in order to model
rho as a function of all the explanatory variables.
The bivariate probit model should not be confused with
a bivariate logit model with a probit link (see
binom2.or
). The latter uses the odds ratio to
quantify the association. Actually, the bivariate logit model
is recommended over the bivariate probit model because the
odds ratio is a more natural way of measuring the association
between two binary responses.
Ashford, J. R. and Sowden, R. R. (1970) Multi-variate probit analysis. Biometrics, 26, 535--546.
Freedman, D. A. (2010) Statistical Models and Causal Inference: a Dialogue with the Social Sciences, Cambridge: Cambridge University Press.
Freedman, D. A. and Sekhon, J. S. (2010) Endogeneity in probit response models. Political Analysis, 18, 138--150.
rbinom2.rho
,
rhobit
,
pbinorm
,
binom2.or
,
loglinb2
,
coalminers
,
binomialff
,
rhobit
,
fisherz
.
# NOT RUN {
coalminers <- transform(coalminers, Age = (age - 42) / 5)
fit <- vglm(cbind(nBnW, nBW, BnW, BW) ~ Age,
binom2.rho, data = coalminers, trace = TRUE)
summary(fit)
coef(fit, matrix = TRUE)
# }
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