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I wanted to test a model with the following:


But the p.values are not interpetable as the assumptions of normality and homoscedasticity are not respected. I'm looking for a non-parametric test that could replace this two-way anova (and more generally an n-way Anova)

Is the Durbin-Watson test a good solution ?

I'm trying to run a Durbin-Watson test but I don't succeed !

dwtest(dep~ind.1*ind.2) # Fail
dwtest(lm(dep~ind.1*ind.2)) # I get only one p.value instead of the three I expected

In order to make my question reproducible, here is some data:

dep = runif(24,0,1)
ind.1 = rep(c(1,2),12)
ind.2 = rep(c(1,2),each=12)
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You can try the Friedman test and the dedicated R function friedman.test or using a bootstrap approach which can be more flexible –  dickoa Jul 2 '13 at 13:41
You're probably thinking of the Durbin test, not the Durbin-Watson test: –  Hong Ooi Jul 2 '13 at 14:22

1 Answer 1

up vote 0 down vote accepted

The Durbin-Watson statistic is primarily used to detect autocorrelation for a time-series analysis, not ANOVA.

You may want to look into the Kruskal-Wallis H test ranked sum test:

There are a lot of resources on Google if you search "R Kruskal-Wallis H test"

Good luck!

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