I'm working with a team and some people are using SPSS to replace missing case (multiple imputation) and, then, analyze the data. When SPSS impute new values, it reports every dataset result and a pooled result, that is different than the mean of all results.
Now, I'm using R to work on this "multiple imputation dataset" created on SPSS. I'm trying to obtain the pooled estimates from a regression in the same way SPSS reports. Grace to this post here, I can use broom package to run several regression models and show each estimate. The problem: some statistics are way different. For example, t value are higher when using broom than what was reported by SPSS. Please, take a look to this SPSS output.
In order to make this job easy, let's say I want to regress price on stars for each group and, after, display a row with pooled estimates (t test result and p-value).
library(broom) d <- data.frame(group=rep(1:5, each = 20), price=rnorm(100,1000,10), stars=rnorm(100,3,1)) fitted_models <- d %>% group_by(group) %>% do(model = lm(price ~ stars, data = .)) fitted_models %>% tidy(model) fitted_models %>% glance(model)
Please, feel free to say this question is irrelevant, but don't negative this post. Other people can have the same question and I provide all codes to you run again the analysis.