I want to predict values for my Pop_avg field in my unsurveyed areas based on surveyed areas. I am using randomForest based on a suggestion to my earlier question.

My surveyed areas:

> surveyed <- read.csv("summer_surveyed.csv", header = T)
> surveyed_1 <- surveyed[, -c(1,2,3,5,6,7,9,10,11,12,13,15)]
> head(surveyed_1, n=1)
  VEGETATION                                        Pop_avg    Acres_1
1 Acer rubrum-Vaccinium corymbosum-Amelanchier spp.       0   27.68884

My unsurveyed areas:

> unsurveyed <- read.csv("summer_unsurveyed.csv", header = T)
> unsurveyed_1 <- unsurveyed[, -c(2,3,5,6,7,9,10,11,12,13,15)]
> head(unsurveyed_1, n=1)
OBJECTID                                       VEGETATION  Pop_avg   Acres_1
      13 Acer rubrum-Vaccinium corymbosum-Amelanchier spp.       0  4.787381

I then removed rows from unsurveyed_1 that contained vegetation types not found in surveyed_1 and dropped the unused feature levels.

> setdiff(unsurveyed_1$VEGETATION, surveyed_1$VEGETATION) 

> unsurveyed_1 <- unsurveyed_1[!unsurveyed_1$VEGETATION == "Typha (angustifolia, latifolia) - (Schoenoplectus spp.) Eastern Herbaceous Vegetation", ]
> unsurveyed_1 <- unsurveyed_1[!unsurveyed_1$VEGETATION == "Acer rubrum- Nyssa sylvatica saturated forest alliance",]
> unsurveyed_1 <- unsurveyed_1[!unsurveyed_1$VEGETATION == "Prunus serotina",]

> unsurveyed_drop <- droplevels(unsurveyed_1)

Next I ran randomForest and predict and added the output to unsurveyed_drop:

> surveyed_pred <- randomForest(Pop_avg ~ 
+ data = surveyed_1,
+ importance = TRUE)

> summer_results <- predict(surveyed_pred, unsurveyed_drop,type="response",
+ norm.votes=TRUE, predict.all=F, proximity=FALSE, nodes=FALSE)

> summer_all <- cbind(unsurveyed_drop, summer_results)
> head(summer_all, n=1)
OBJECTID                                        VEGETATION Pop_avg   Acres_1 summer_results
      13 Acer rubrum-Vaccinium corymbosum-Amelanchier spp.       0  4.787381       0.120077

I would like to estimate values for the column Pop_avg in summer_all. I am assuming that I need to use the proportions generated in summer_results, but I'm unsure how I would do this. Thanks for any help or further suggestions.

More information: I am looking to get predicted count data for Pop_avg based on Vegetation and Acres_1. I am not sure if/how to use the probabalities in my output summer_results to achieve this or if I need to alter my model or try a different method.

E2 The reason I didn't think the output was right is because Pop_avg ranges anywhere from .333 and up (where there were deer seen) which is Population divided by 3. And Population ranges from 1 and up (i.e. 10, 20...). When I ran the model trying to predict either one I get similar numbers that range from .9xx to 2 or 3.xxx especially when I ran it with Population. Which didn't seem right.



  • What did you try, and why does it make you think you are doing something wrong? Jan 18, 2016 at 23:29
  • @AndyClifton I'm still new to R and this is the first time I have used randomForest. But from what I have seen the output in summer_results is a probability for the prediction. I may be wrong though. And I was trying to figure out my next steps for getting estimated values for Pop_avg.
    – Southard
    Jan 19, 2016 at 0:03
  • Unfortunately the way you're question is written it's hard to understand; you've got a mixture of statistics and programming You might want to focus on one or other issue and tidy up the question. Also, some example data would help. Jan 21, 2016 at 13:11
  • 1
    Random forest will return values that are in the exact same units as the training data. So if your 'pop_avg' data are numbers (not proportions) there's no correction to make. If the area of your prediction site is different than your training site you would have to weight the data accordingly. Jan 21, 2016 at 13:11
  • @AndyClifton I added links for my sample data along with a brief explanation why I didn't think my output looked right. I also tried running with just Vegetation as my prediction parameter with similar results.
    – Southard
    Jan 21, 2016 at 21:44

1 Answer 1


My problem lied within my training model. I figured out that I needed to use a subset of my surveyed data where Population > 0 to get more accurate predictions.

> surveyed_1 <- surveyed_1[c(surveyed_1$Population > 0),]
> surveyed_drop <- droplevels(surveyed_1)
> surveyed_pred <- randomForest(Population ~ 
                data = surveyed_drop,
                importance = TRUE)
  • So your problem was not the programming, but more to do with the model development. That's not unusual! Feb 8, 2016 at 0:01

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