I am running randomForest. I have a training data set (dsubset) and predictor data set (dfull). I got an error message related to training and predictor data not having the same number of levels but was able to get this sorted (I think). I thought I was humming along but then I realized that there was a new mistake. Basic model:

RF.test<-randomForest(Yield ~ Rate + Cultivar + soil1 + soil2 + soil3, 
                           ntree=5000, data=dsubset)

I then developed new dataframes for each rate and cultivar, the idea is to predict yield as f(rate, cultivar, soil factors) then ID what rate and cultivar gives the highest yield. HEre is how I created new data frames:

seed3<-dfull
seed3$rate<-3
seed3$rate<-factor(seed3$rate, c(3, 5, 7))
seed3$cultivar<-"var1"
seed3.var1<-seed3
seed3.var1$cultivar<-factor(seed3.var1$cultivar)

seed5<-dfull
seed5$rate<-5
seed5$rate<-factor(seed3$rate, c(3, 5, 7))
seed5$cultivar<-"var1"
seed5.var1<-seed5
seed5.var1$cultivar<-factor(seed5.var1$cultivar)

seed7<-dfull
seed7$rate<-7
seed7$rate<-factor(seed3$rate, c(3, 5, 7))
seed7$cultivar<-"var1"
seed7.var1<-seed7
seed7.var1$cultivar<-factor(seed7.var1$cultivar)


seed3<-dfull
seed3$rate<-3
seed3$rate<-factor(seed3$rate, c(3, 5, 7))
seed3$cultivar<-"var2"
seed3.var2<-seed3
seed3.var2$cultivar<-factor(seed3.var2$cultivar)

seed5<-dfull
seed5$rate<-5
seed5$rate<-factor(seed3$rate, c(3, 5, 7))
seed5$cultivar<-"var2"
seed5.var2<-seed5
seed5.var2$cultivar<-factor(seed5.var2$cultivar)

seed7<-dfull
seed7$rate<-7
seed7$rate<-factor(seed3$rate, c(3, 5, 7))
seed7$cultivar<-"var2"
seed7.var2<-seed7
seed7.var2$cultivar<-factor(seed7.var2$cultivar)

When I looked at the new dataframes I could see where they were correctly subsetting based on rate and cultivar. So far so good.

this next section seemed to fix the level issue
levels(seed3.var1$cultivar) <- levels(dsubset$cultivar)
levels(seed5.var1$cultivar) <- levels(dsubset$cultivar)
levels(seed7.var1$cultivar) <- levels(dsubset$cultivar)
levels(seed3.var1$cultivar) <- levels(dsubset$cultivar)
levels(seed5.var1$cultivar) <- levels(dsubset$cultivar)
levels(seed7.var1$cultivar) <- levels(dsubset$cultivar)

So then I ran:

predict<-data.frame(predict(RF.test, newdata=seed3.var1), predict(RF.test, newdata=seed5.var1), predict(RF.test, newdata=seed7.var1), predict(RF.test, newdata=seed3.var2), predict(RF.test, newdata=seed5.var2), predict(RF.test, newdata=seed7.var2))

Seemed like it was all good. However, when I typed:

head(predict) 

I could see where I was getting a solid estimate of yield that varied across rates (3,5,7), but for rate3.var1, and rate3.var2, the predicted yield was identical. Ditto for 5 and 7.

Not sure where I messed it up. Was it the way I fixed my levels, the way I set up my data frames, or randomForest itself? Both rate and cultivar are factors, soil variables were numeric. I verified they were factors in predictor and training data using sapply(data, class). This is my first time trying to do something like this. Any help most appreciated.

Thanks!

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