# Simulating p-values for Chi-Squared Test using Monte-Carlo Method

I'm trying to write a script in R that allows to aproximate by simulation the critical values (p-values) for a Pearson Chi Squared test, taking different alpha values.

I know that an option in "chisq.test" exists, but I want to know how to do this simulation by hand.

For example:

Please check the code at http://www.biostat.wisc.edu/~kbroman/teaching/stat371/comp21.R (I don't know how to put the code properly)

If you check the last part ("p-value by simulation"), you'll see the way p-value are obtained in the script. I want to do this, but taking different alpha values.

Thank you very much!

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so what is your question ... ? What have you tried? ... have you dug into the code for `chisq.test` ... ? – Ben Bolker Jun 5 '12 at 9:32
Yes, I'll be more specific. I tried this: biostat.wisc.edu/~kbroman/teaching/stat371/comp21.R But I don't know how to take different alpha values for the simulations of p-value. Thank you very much. – anxoestevez Jun 5 '12 at 9:39
Can you modify your question to reflect this? – Roman Luštrik Jun 5 '12 at 9:42
But that script doesn't appear to specify any alpha values: instead, it computes the exact p-value as follows: `mean(xsqsim >= xsq)`. Based on this p-value, you can choose any alpha level you want for rejection / failure to reject the null hypothesis ... – Ben Bolker Jun 5 '12 at 10:01

If you have done a simulation as shown in the script, and have derived a vector of simulation values `xsqsim`, then the critical value for an alpha level of `alpha` is approximately

``````quantile(xsqsim,1-alpha)
``````

You have to be a little bit careful if you have a small sample, because the critical value should be the value of the test statistic q such that the probability of the observed value being greater than or equal to q is equal to alpha ...

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Thank you! This is the answer I was looking for. – anxoestevez Jun 5 '12 at 14:05

The calculation of p-value of any statistical test (whatever method: classical, bootstrap) has nothing to do with alpha value if you mean significance level by that. You need alpha value when making a decision to accept or reject the null hypothesis (if p-value is less than chosen alpha then reject the null).

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