Memorandum 1689
Detecting positive quadrant dependence and positive function dependence
A. Janic-Wroblewska, W.C.M. Kallenberg & T. Ledwina
Abstract:
There is a lot of interest in positive
dependence going beyond linear correlation. In this paper three new rank
tests for testing independence against positive dependence are introduced.
The first one is directed on positive quadrant dependence, the second and
third one concentrate on positive function dependence. The new testing
procedures are not only sensitive for positive grade linear correlation, but
also for positive grade correlations of higher order. They are based on the
principle of data driven tests, which consists of three steps. Firstly,
parametric families are introduced spanning up the space of null hypothesis
and alternatives; secondly, within the families good tests are used;
thirdly, a selection rule determines the appropriate model. The new tests
improve standard tests for linear correlation as Spearman's rank correlation
test substantially in case some proper higher order correlations are
exhibited by the data, while the loss in power under alternatives with
dominating linear correlation is not very high. Monte Carlo results clearly
show this behavior.
Keywords:
Positive quadrant dependence, positive function dependence, rank test, model selection, Monte Carlo study,
projected Legendre polynomials
Mathematics Subject Classification: 62G10, 62H20, 65C05
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