Pw. Gieser et Rh. Randles, NONPARAMETRIC TEST OF INDEPENDENCE BETWEEN 2 VECTORS, Journal of the American Statistical Association, 92(438), 1997, pp. 561-567
A new statistic, (Q) over cap(n)$, based on interdirections is propose
d for testing whether two vector-valued quantities are dependent. The
statistic, which has an intuitive invariance property, reduces to the
quadrant statistic when the two quantities are each univariate. Under
the null hypothesis of independence, (Q) over cap(n)$, has a limiting
chi-squared distribution when each vector is elliptically symmetric. T
he new statistic is compared to the classical normal theory competitor
-Wilks' likelihood ratio criterion-and a componentwise quadrant statis
tic. Using a novel model of dependence between the vectors; Pitman asy
mptotic relative efficiencies (ARE's) are computed. The Pitman ARE's i
ndicate that (Q) over cap(n)$ compares favorably to Wilks' likelihood
ratio criterion when the vectors have heavy-tailed elliptically symmet
ric distributions and is uniformly better than the componentwise quadr
ant statistic when the vectors are spherically symmetric. A simulation
study demonstrates that (Q) over cap(n)$ performs better than the oth
ers for heavy-tailed distributions and is competitive for distribution
s with moderate rail weights. Finally, an example illustrates that (Q)
over cap(n)$ is resistant to outliers.