Compute Wald test for joint restrictions on coefficients
Compute a Wald test for a linear hypothesis on the coefficients. Also supports Delta-approximation for non-linear hypotheses.
waldtest(
  object,
  R,
  r,
  type = c("default", "iid", "robust", "cluster"),
  lhs = NULL,
  df1,
  df2
)| object | object of class  | 
| R | matrix, character, formula, function, integer or logical. Specification of which exclusions to test. | 
| r | numerical vector. | 
| type | character. Error structure type. | 
| lhs | character. Name of left hand side if multiple left hand sides. | 
| df1 | integer. If you know better than the default df, specify it here. | 
| df2 | integer. If you know better than the default df, specify it here. | 
The function waldtest computes a Wald test for the H0: R beta = r,
where beta is the estimated vector coef(object).
If R is a character, integer, or logical vector it is assumed to
specify a matrix which merely picks out a subset of the coefficients for
joint testing. If r is not specified, it is assumed to be a zero
vector of the appropriate length.
R can also be a formula which is linear in the estimated
coefficients, e.g. of the type ~Q-2|x-2*z which will test the joint
hypothesis Q=2 and x=2*z.
If R is a function (of the coefficients), an approximate Wald test
against H0: R(beta) == 0, using the Delta-method, is computed.
In case of an IV-estimation, the names for the endogenous variables in
coef(object) are of the type "`Q(fit)`" which is a bit dull to
type; if all the endogenous variables are to be tested they can be specified
as "endovars". It is also possible to specify an endogenous variable
simply as "Q", and waldtest will add the other syntactic sugar
to obtain "`Q(fit)`".
The function waldtest computes and returns a named numeric
vector containing the following elements.
p is the p-value for the Chi^2-test 
chi2
is the Chi^2-distributed statistic.  
df1 is the degrees of
freedom for the Chi^2 statistic.  
p.F is the p-value for the F
statistics 
F is the F-distributed statistic.  
df2
is the additional degrees of freedom for the F statistic. 
The return value has an attribute 'formula' which encodes the
restrictions.
x <- rnorm(10000) x2 <- rnorm(length(x)) y <- x - 0.2*x2 + rnorm(length(x)) #Also works for lm summary(est <- lm(y ~ x + x2 )) # We do not reject the true values waldtest(est, ~ x-1|x2+0.2|`(Intercept)`) # The Delta-method coincides when the function is linear: waldtest(est, function(x) x - c(0, 1, -0.2))
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