I have a longitudinal (panel) data frame called `tradep_red`

in long format that contains 200 countries (`country`

), 26 years (`year`

), the continuous dependent variable `gini`

and 2 continuous predictor variables (`trade`

and `unempl`

, in reality there are 13 but I reduced it to 2 for the sake of this question). Both `gini`

and the predictor variables contain missing values. Dummy data is shown below:

```
# Generate dummy data
set.seed(12345)
country <- as.factor(rep(1:200, each = 26))
year <- rep(1:26, times = 200)
gini <- rnorm(n = 200*26, mean = 20, sd = 4)
trade <- rnorm(n = 200*26, mean = 1000, sd = 7)
unempl <- rnorm(n = 200*26, mean = 4, sd = 0.2)
# Add NA values
missing_indices_gini <- sample(1:length(gini), 1000)
gini[missing_indices_gini] <- NA
missing_indices_trade <- sample(1:length(trade), 800)
trade[missing_indices_trade] <- NA
missing_indices_unempl <- sample(1:length(unempl), 900)
unempl[missing_indices_unempl] <- NA
# Combine into dataframe
tradep_red <- data.frame(country, year, gini, trade, unempl)
head(tradep_red)
## country year gini trade unempl
## 1 1 1 22.34212 1006.3982 3.740346
## 2 1 2 22.83786 997.7583 3.801918
## 3 1 3 19.56279 996.9160 3.699202
## 4 1 4 NA NA 3.838534
## 5 1 5 22.42355 996.0563 3.835563
## 6 1 6 NA 1005.5007 4.115319
```

I want to multiple impute the missing values in the data while specifically accounting for the multilevel structure in the data (i.e. clustering by `country`

). With the code below (using the `mice`

package), I have been able to create imputed data sets with the `pmm`

method.

```
library(mice)
# Multiple imputation
predictorMatrix <- quickpred(tradep_red,
include = c("country", "gini", "trade", "unempl"),
exclude = c("year"), mincor = 0.1)
imp <- mice(data = tradep_red,
m = 3,
maxit = 5,
method = "pmm",
predictorMatrix = predictorMatrix,
seed = 123)
```

However, I would like to use the `2l.pan`

method (or another method such as `panImpute`

) to account for the cluster variable `country`

. The `2l.pan`

method requires a cluster variable to be specified in the `predictorMatrix`

by giving `country`

a value of `-2`

, and then running the imputation:

```
predictorMatrix["country", ] <- -2 # specify country as cluster variable
imp <- mice(data = tradep_red,
m = 3,
maxit = 5,
method = "2l.pan",
predictorMatrix = predictorMatrix,
seed = 123)
```

This however gives the error:

```
## iter imp variable
## 1 1 giniError in mice.impute.2l.pan(y = c(22.3421152713754, 22.8378640700381, :
## No class variable
```

Alternatively, the cluster variable can be specified in a `formula`

statement with the `|`

operator. Moreover, the formula statement is required to be a `list`

. I have not succeeded in correctly specifying this formula statement. The code below shows what I have tried:

```
formula_imp <- list(gini + trade + unempl ~ (1 | country))
imp <- mice(data = tradep_red,
m = 3,
maxit = 5,
method = "2l.pan",
predictorMatrix = predictorMatrix,
formulas = formula_imp,
seed = 123)
```

This gives the error:

```
## iter imp variable
## 1 1 gini trade unempl giniError in mice.impute.2l.pan(y = c(22.3421152713754, 22.8378640700381, :
## No class variable
## In addition: Warning messages:
## 1: In Ops.factor(1, country) : ‘|’ not meaningful for factors
## 2: In Ops.factor(1, country) : ‘|’ not meaningful for factors
## 3: In Ops.factor(1, country) : ‘|’ not meaningful for factors
```

I get similar errors when trying to use the alternative `panImpute`

method in the `mice`

function. How can I correctly specify `country`

to be the cluster variable for the multiple imputation process? Any help or references are greatly appreciated!