I am currently using
mitools to analyze 5 imputed datasets (I used Amelia). The unit of analysis is country-year. Each dataset has over 3600 observations. The dependent variable of interest for all analyses is a lagged count variable.
Given the nature of the data (panel & count), I decided to use the
pglm package. I have been using the following code to attempt to estimate pglm models across all five imputed datasets, in order to combine those estimates with mitools:
setwd("C:/Desktop") library(mitools) library(pglm) #The data.dir code below establishes where the files are located data.dir <- "C:/Desktop" #The imputationList function combines all 5 imputed gtot datasets into one object #called allgtot allcountdata <- imputationList(lapply(list.files(data.dir, pattern = "panelcount.\\.dta", full=TRUE),read.dta, warn.missing.labels=FALSE)) #To see if the combining was successful allcountdata #Lets see if all of the column names are still there colnames(allcountdata) count_mitools<-pglm(count_lag ~ HROsec + hrofilled + physint + democracy + log(PopTotal) + GDPpercapita + cell + gini + polity2 + CivilWar + milper + elp + factor(year), allcountdata, family="negbin", model="within", print.level=0, method="nr", index=c("cowcode", "year"))
However, I get the following error:
Error in is.finite(x[[i]]) : default method not implemented for type 'list'
I attempt to coerce the list object into a dataframe as follows:
However, R states that I cannot do so.
What can I do to make the pglm estimation work?
If I cannot use pglm, what are alternatives models (and corresponding R packages) suitable for panel count data regression analysis that are either (preferably both):
a) compatible with a mitools analysis
b) accepting of list objects for estimation
I am providing a link to a compressed zipfile containing all five imputed datasets I am working with here.