Abstract
Multiple regression quadratic assignment procedures (MRQAP) tests are permutation tests for multiple linear regression model coefficients for data organized in square matrices of relatedness among n objects. Such a data structure is typical in social network studies, where variables indicate some type of relation between a given set of actors. We present a new permutation method (called "double semi-partialing", or DSP) that complements the family of extant approaches to MRQAP tests. We assess the statistical bias (type I error rate) and statistical power of the set of five methods, including DSP, across a variety of conditions of network autocorrelation, of spuriousness (size of confounder effect), and of skewness in the data. These conditions are explored across three assumed data distributions: normal, gamma, and negative binomial. We find that the Freedman-Lane method and the DSP method are the most robust against a wide array of these conditions. We also find that all five methods perform better if the test statistic is pivotal. Finally, we find limitations of usefulness for MRQAP tests: All tests degrade under simultaneous conditions of extreme skewness and high spuriousness for gamma and negative binomial distributions.
| Original language | English |
|---|---|
| Pages (from-to) | 563-581 |
| Number of pages | 19 |
| Journal | Psychometrika |
| Volume | 72 |
| Issue number | 4 |
| DOIs | |
| Publication status | Published - Dec 2007 |
Keywords
- Collinearity
- Dyadic data
- Mantel tests
- MRQAP
- Network autocorrelation
- Permutation tests
- Social networks
ASJC Scopus subject areas
- General Psychology
- Applied Mathematics
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