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Missing statistical features

Certain very simplistic things are missing in the JMp platform

(1) JMP cannot do propensity score matching

(2) JMP does not calculate Cramer's V or Cohan's D for effect size calculation

(3) JMP cannot do multiple imputation for categorical variables (only does informative missing option)

(4) JMP does not allow random effects in logistic regression models

I may be mistaken in some of these. But I have asked this question in the discussion forums and as far as I can tell are accurate. Some of these are real bummer's

1 Comment
Raaed
Level IV

Hi

 

1- go to analyze > fit y by x

2- install this Add-in: Calculate Effect Sizes

Calculate Effect Sizes Add-in - JMP User Community

3- go to analyze > consumer research > categorical (everything existing and more in output window)

4- This link will answer all questions regarding Point 4

Specifying and Fitting Models - JMP User Community

 

# Hit (accept as solution) after checking