A multivariate hypothesis test for a single population mean or a difference between them. This version attempts to adjust for multivariate autocorrelation in the samples.
approx.hotelling.diff.test(
x,
y = NULL,
mu0 = 0,
assume.indep = FALSE,
var.equal = FALSE,
...
)
An object of class htest
with the following information:
The \(T^2\) statistic.
Degrees of freedom.
P-value.
Method specifics.
Null hypothesis mean or mean difference.
Always "two.sided"
.
Sample difference.
Estimated variance-covariance matrix of the estimate of the difference.
Estimated variance-covariance matrix of the estimate of the mean of x
.
Estimated variance-covariance matrix of the estimate of the mean of y
.
It has a print method print.htest()
.
a numeric matrix of data values with cases in rows and variables in columns.
an optinal matrix of data values with cases in rows and variables in columns for a 2-sample test.
an optional numeric vector: for a 1-sample test, the poulation mean under the null hypothesis; and for a 2-sample test, the difference between population means under the null hypothesis; defaults to a vector of 0s.
if TRUE
, performs an ordinary Hotelling's
test without attempting to account for autocorrelation.
for a 2-sample test, perform the pooled test: assume population variance-covariance matrices of the two variables are equal.
additional arguments, passed on to spectrum0.mvar()
,
etc.; in particular, order.max=
can be used to limit the order
of the AR model used to estimate the effective sample size.
Hotelling, H. (1947). Multivariate Quality Control. In C. Eisenhart, M. W. Hastay, and W. A. Wallis, eds. Techniques of Statistical Analysis. New York: McGraw-Hill.