I want to get predicted probabilities from an ordered logit model.

Code:

```
library(plyr)
library(forcats)
library(MASS)
library(tidyverse)
library(dplyr)
zz <- "DV IV1 IV2 year
1 51 0 1987
2 49 1 1988
3 47 0 1990
5 50 0 1991
5 54 1 1992
1 23 0 1993
3 15 0 1994"
Data <- read.table(text=zz, header = TRUE)
Data <- mutate(Data, DV=as.ordered(DV))
order <- polr(DV ~ IV1 + IV2 + IV1*IV2 + factor(year), data=Data,
method = "logistic", Hess = TRUE)
```

After running this, a warning is shown:

```
Warning message:
In polr(DV ~ IV1 + IV2 + IV1 * IV2 + factor(year), data = Data, :
design appears to be rank-deficient, so dropping some coefs
```

Then I run:

```
colMeans(predict(order, type="probs",
newdata=mutate(Data, IV2=1, IV1=50)), na.rm=TRUE)
```

R responds:

```
Error in X %*% object$coefficients : non-conformable arguments
```

I tried the linear model without "factor(year)", then error was gone. But "factor(year)" is supposed to be included in the model to address time-series. How can I include it without any error of "non-conformable arguments"?

`polr`

has dropped a column (in this case`year`

). This causes the problem later when you are trying to predict using that variable. – jsb Dec 7 '17 at 22:56`polr`

? See here. – jsb Dec 8 '17 at 10:20