Hi All,
I am running the same IRT 2PL model on a dataset with N=3800 and 90 binary correct/incorrect questions. I execute the following code:
Then, I get the following output in the course of an hour:
After waiting so long, I stopped executing because I assumed it would never converge. Is there any chance I just have to wait longer? And if it won't converge, are there any diagnostics I can run to figure out why?
Thanks,
Julian
I am running the same IRT 2PL model on a dataset with N=3800 and 90 binary correct/incorrect questions. I execute the following code:
Code:
* keep test questions only keep `varlist' * drop test questions with no variation (all correct, incorrect, or missing) foreach v of varlist `varlist' { qui su `v' if `r(min)' == `r(max)' drop `v' } * execute IRT irt 2pl *
Then, I get the following output in the course of an hour:
Code:
Fitting fixed-effects model: Iteration 0: log likelihood = -59359.816 Iteration 1: log likelihood = -58770.459 Iteration 2: log likelihood = -58739.195 Iteration 3: log likelihood = -58738.806 Iteration 4: log likelihood = -58738.803 Fitting full model: Iteration 0: log likelihood = -53512.642 (not concave) Iteration 1: log likelihood = -47149.536 (not concave) Iteration 2: log likelihood = -44276.88 (not concave) Iteration 3: log likelihood = -43419.177 (not concave) Iteration 4: log likelihood = -43419.933 (not concave) Iteration 5: log likelihood = -43419.937 (not concave) Iteration 6: log likelihood = -43421.084 (not concave) Iteration 7: log likelihood = -43420.58 (not concave) Iteration 8: log likelihood = -43420.456 (not concave) Iteration 9: log likelihood = -43420.208 (not concave) Iteration 10: log likelihood = -43388.661 (not concave) Iteration 11: log likelihood = -43389.113 (not concave) Iteration 12: log likelihood = -43389.478 (not concave) Iteration 13: log likelihood = -43389.929 (not concave) Iteration 14: log likelihood = -43390.409 (not concave) Iteration 15: log likelihood = -43390.748 (not concave) Iteration 16: log likelihood = -43391.297 (not concave) Iteration 17: log likelihood = -43391.53 (not concave) Iteration 18: log likelihood = -43392.171 (not concave) Iteration 19: log likelihood = -43392.359 (not concave) Iteration 20: log likelihood = -43392.91 (not concave) Iteration 21: log likelihood = -43393.361 (not concave) Iteration 22: log likelihood = -43393.899 (not concave) Iteration 23: log likelihood = -43393.914 (not concave) Iteration 24: log likelihood = -43393.079 (not concave) Iteration 25: log likelihood = -43393.492 (not concave) Iteration 26: log likelihood = -43393.691 (not concave) Iteration 27: log likelihood = -43394.232 (not concave) Iteration 28: log likelihood = -43394.041 (not concave) Iteration 29: log likelihood = -43394.15 (not concave) Iteration 30: log likelihood = -43394.174 (not concave) Iteration 31: log likelihood = -43393.97 (not concave) Iteration 32: log likelihood = -43387.279 (not concave) Iteration 33: log likelihood = -43387.743 (not concave) Iteration 34: log likelihood = -43366.804 (not concave) Iteration 35: log likelihood = -43366.193 (not concave) Iteration 36: log likelihood = -43354.845 (not concave) Iteration 37: log likelihood = -43319.461 (not concave) Iteration 38: log likelihood = -43319.701 (not concave) Iteration 39: log likelihood = -43315.466 (not concave) Iteration 40: log likelihood = -43315.052 (not concave) Iteration 41: log likelihood = -43315.599 (not concave) Iteration 42: log likelihood = -43315.196 (not concave) Iteration 43: log likelihood = -43315.745 (not concave)
Thanks,
Julian
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