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
> surveyed_pred <- randomForest(Pop_avg ~ + VEGETATION+Acres_1, + 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
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.
I am looking to get predicted count data for
Pop_avg based on
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.
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.