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While trying to do give a seminar on how to analyse ordinal data (and why metric tests, such as the t-test are bad to use in this case), I have tried to do chi-squared tests on simulated data in R.

No matter how big I make the differences, however, I cannot detect this difference with:

chisq.test(data,data2)

When running a large number of simulations, only ~ 5 percent of the p-values are below 0.05 indicating there is no true difference.

enter image description here

... Which confuses me, as I know the difference is there.

Is there anything wrong with my code? https://pastebin.com/NtbJGpez

All input is more than appreciated.

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    I don't think there's anything wrong with your code. I think the problem is the hypothesis. The null hypothesis for the chi-square test is that the two samples are independent. Rejection of the hypothesis suggests that there is evidence pointing toward an association. As it turns out, your data sets are independent. That means you're simulating under the conditions of the null hypothesis, not the alternative. What you need is a process to simulate dependent ordinal data. – Benjamin Jan 24 '18 at 14:47
  • Hello Benjamin and thanks for you answer. After looking into it again, I see that you are right. The code does what I ask it to. What I should do instead is something like this: 'chisq.test(c(rep(1,simn),rep(2,simn)),c(data,data2))' After doing that, the p-values matches more closely the differences in my simulations. – Simon Hviid Del Pin Jan 24 '18 at 15:29

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