# choropleth of states with zips of counties?

I'm trying to make choropleth map with a bunch of different codes. my problem is that I have longitude, latitude and zipcode. So many zipcodes combine to 1 state. What I want to show is how often is a state present in my data. e.g I have 10 customers so every customer is 1 row. and the 10 customers spread in the states. but 2 customers have the same zipcode and a third one has a different zipcode but the state is the same as customer 1 and 2 have. so therefore I used this formula to count the number of customers in 1 state

``````    result<- ddply(df, .(state), transform, count2 = count(state))
``````

my data looks like this after applying the code(before it's just been the first 3 columns):

``````    state   longitude   latitude    count2.x    count2.freq
1   AK  -149.87828  61.21680        AK           67
2   AK  -149.87828  61.21680        AK           67
3   AK  -131.67620  55.36864        AK           67
4   AL  -85.92669   32.90343        AL           1582
5   AL  -85.92669   32.90343        AL           1582
``````

now I want to colour the numbers in count2.freq the darker the higher the number is. therefore I tried out this different ways

``````    count<-c(unique\$count2.freq)
> unique\$count2freq <- as.numeric(count)
> col = rainbow(length(levels(unique\$count2freq)))
> spplot(unique, "count2.freq", col.regions=col, main="count of states")

select<- result[(result\$count2.freq),]
> Map<- data.frame(select\$longitude, select\$latitude, select\$count2.freq)
> names(Map)<- c("longitude", "latitude", "count")
> Geo=gvisGeoMap(Map, locationvar=c("longitude","latitude"), numvar="count", options=list(height=350, dataMode='regions'))

colors=c("#F1EEF6", "#D4B9DA", "#C994C7", "#DF65B0", "#DD1C77", "#980043")
>count\$colorBuckets<- as.numeric(cut(result\$count2, c(round(seq(from=0, to=21023, length=8), digits=0))))
>colorsmatch<- count\$colorBuckets[match(zipcode\$state, result\$state)]
>map("county", col=colors[colorsmatched], fill=TRUE, resolution=0, lty=0, projection="polyconic")
>map("state", col="white", fill=FALSE, add=TRUE, lty=1, lwd=0.2, projection="polyconic")
``````

but none of them works the way I wanted or lets say I didn't even get a map out of there. Any suggestions?I hope you could understand what I'm trying to do

UPDATE

ok so I'm starting from the beginning my dataset is

``````   zip_code churn   plan_chosen total_minute_qty_sum    bill_month2
1   605     0           1              10                 01.01.2002
2   605     1           1              98                 01.01.2003
3   612     0           1              8                  01.01.2002
4   623     0           1              3                  01.01.2002
5   32806   0          1              409                 01.12.2002
6   32806   0          1              324                 01.01.2003
7   68124   0          1              118                 01.09.2002
8   86413   0          1              148                 01.03.2002
9   99901   0          1              123                 01.05.2003
``````

since as you can see there are no zipcodes or anything that I could map I'm merging this dataset with the dataset of the zipcode package

``````merge1<-merge(zipcode, stack, by.x='zip', by.y='zip_code', all.y=TRUE)
``````

what I get is this

``````zip city    state   latitude    longitude   churn   plan_chosen total_minute_qty_sum    bill_month2
``````

the six hundreds dropping out. that I use the plyr package and this code to count the number of states available in my data

``````result<- ddply(merge1, .(state), transform, count2 = count(state))
``````

than my data looks like this

``````     zip    city    state     latitude  longitude   churn   plan_chosen total_minute_qty_sum    bill_month2 count2.x    count2.freq
1   99901   Ketchikan     AK    55.36864    -131.67620  0      1        123                     01.05.2003        AK    1
2   86413   Golden Valley AZ    35.19090    -114.24036  0      1        148                     01.03.2002        AZ    1
3   32806   Orlando      FL     28.51483    -81.36054   0      1        409                     01.12.2002        FL    2
``````

I've just cut out a few data, but thats actually the dataset I want to map. In my bigger dataset I tried to drop the duplicates because I just wanted to colour the state 1 time. So my problem is now to tell R that I want different colour for different number s of count2.freq eventhough I don't know in what range it's gonna be I want R to split my data into different intervals and colour them different. in the last of my examples above I already get stuck on the line

``````>count\$colorBuckets<- as.numeric(cut(result\$count2.freq, c(round(seq(from=0, to=21023, length=8), digits=0))))
``````

there a warning comes up telling me it turn the left side into a list. I hope I could provide some information that is useful for you, so that you can help me out and understand. thanks for helping

-
What are the dataframe `unique` and `count`? You never seem to create them (and as far as I know they are both functions). What is the following supposed to do: `count<-c(unique\$count2.freq)`? You specify that your object `unique\$count2freq` is a numeric and yet on the line after that you're trying to watch its levels (which is something that only factors have). More importantly, when I load the dataframe `df` from one of your previous questions (since you didn't provide here with one, I'm assuming it is the same) and try your first line of code, it is sending me an error. –  plannapus Oct 18 '12 at 9:39
Function `spplot` needs also to be inputted with an object of class `spatial` not with a dataframe. Concerning function `gvisGeoMap`: from which package does it come from? –  plannapus Oct 18 '12 at 9:43
@plannapus unique is the name my data after I removed the duplicates. I haven't posted all the code since I'm trying on this already since a couple days switching the names while switching the codes. count is the data unique\$count2.freq which you can read in the table that I posted above (last column ist count2.freq). plus I didn't provide a bigger data frame since I cut down on variables because there were many NA's in it what makes it difficult to map certain things. and the gvisGeoMap comes from googleVis package I'm trying to get things strait with R but it's just complicated for me –  user1741021 Oct 18 '12 at 9:53
since I've been told not just to post a question but provide you with as much information as possible I've been trying really hard. I really thankfull for every help so let me know what else you need before R is killing me –  user1741021 Oct 18 '12 at 10:00
I think the key is providing us with an example we can copy-paste and run ourselves. You do this by providing (a subset) of your data, or recreating your situation using a readily available dataset in R. See stackoverflow.com/questions/5963269/… for more details –  Paul Hiemstra Oct 18 '12 at 10:25