MRQAP (Multiple Regression { Quadratic Assignment Procedure)
tests are permutation tests for multiple regression coe±cients for data
organized in square matrices instead of vectors. Such a data structure
is typical in social network studies, where variables indicate some type
of relation between a given set of actors. Over the last 15 years, new
approaches to permutation tests have been developed. Some of the
proposed tests have been found to be substantially more robust against
collinearity in the data. Most studies evaluating the performance of
permutation tests in linear models for square matrices do not consider
the type of structural autocorrelation that is typical for social network
data. We present a new permutation method that complements the
family of extant tests. Performance of various di®erent approaches
to MRQAP tests is evaluated under conditions of row and column
autocorrelation in the data as well as collinearity between the variables
through an extensive series of simulations.