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I’m new to ggplot2 and this is my first attempt to create a map in R and I’ve run into some issues. I’m trying to make a map showing the homicide rates at the municipal level in Honduras. I tried adapting code from: Administrative regions map of a country with ggmap and ggplot2 ^Specifically I started with the code offered in the comments section at the bottom for mapping unemployment in Pakistan.

Data: HND_adm2.Rdata – this can be downloaded from: http://www.gadm.org/download Homicide data is from: http://iudpas.org/participacionciudadana/Denuncias/mapa_oficial which I have in csv format – saved as “mydata

My first attempt:

load("HND_adm2.RData")
honduras.adm2.spdf<-get("gadm")
honduras.adm2.df <- fortify(honduras.adm2.spdf, region = "ID_2") #I used ID_2 instead of NAME_2     because several municipalities have the same name
data<-read.csv(“mydata”)
HNDdf<-data.frame(id= unique(honduras.adm2.df[,'id']), Tasa_Homicidios= runif(n =           length(unique(honduras.adm2.df[,'id'])), min = 0, max = 224))
honduras.adm2.df<-merge(honduras.adm2.df,HNDdf,by.y = 'id', all.x = TRUE)
honduras.adm2.centroids.df<- data.frame(long = coordinates(honduras.adm2.spdf)[, 1], lat =     coordinates(honduras.adm2.spdf)[, 2])
p <- ggplot(honduras.adm2.df, aes(x = long, y = lat, group = group)) + geom_polygon(aes(fill =     cut(Tasa_Homicidios,8))) +
labs(x=" ", y=" ")  + 
theme_bw() + scale_fill_brewer('Homicide Rate per 100,000 (2013)', palette  = 'Greys') + 
coord_map() + 
theme(panel.grid.minor=element_blank(), panel.grid.major=element_blank()) + 
theme(axis.ticks = element_blank(), axis.text.x = element_blank(), axis.text.y = element_blank()) + 
theme(panel.border = element_blank())
print(p)

This gave a map that looks like what I was trying to achieve – except after checking it more carefully I’ve realized it is not correctly matching the Homicide Rate with the Municipality.

I tried correcting it and ran this code:

honduras.adm2.df <- fortify(honduras.adm2.spdf, region = "ID_2")
data<-read.csv(file.choose(),header=T)
HNDdf<-as.data.frame(data) # data as dataframe
HNDdf<-data.frame(id= unique(honduras.adm2.df[,'id']), HNDdf)
honduras.adm2.df<-merge(honduras.adm2.df,HNDdf,by.y = 'id', all.x = TRUE)
honduras.adm2.centroids.df<- data.frame(long = coordinates(honduras.adm2.spdf)[, 1], lat =     coordinates(honduras.adm2.spdf)[, 2]) 
 p <- ggplot(honduras.adm2.df, aes(x = long, y = lat, group = group, fill = cut(Tasas_Homicidios,6))) + geom_polygon() + labs(x=" ", y=" ")  + theme_bw() + scale_fill_brewer('Homicide Rate per 100,000 (2013)', palette  = 'Greys') + coord_map() + theme(panel.grid.minor=element_blank(), panel.grid.major=element_blank()) + theme(axis.ticks = element_blank(), axis.text.x = element_blank(), axis.text.y = element_blank()) + theme(panel.border = element_blank())
print(p)

Which gave a different looking but still incorrect map.

I think the issue is in combining the csv data and the HND_adm2.Rdata – but I have no idea how to do this correctly.

Any help/suggestions would be greatly appreciated!!

share|improve this question
1  
Dunno if this is your problem, but order matters with the mapping data.frames, and merge sometimes mixes things up a little. Try sorting after the merge or using plyr::join instead. –  Gregor Jun 9 '14 at 23:36

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