I have time series data for several countries and several years, say Italy, Spain, USA. I'd like to plot the data for some countries relative to another country: say plot real GDP per capita in Italy and Spain as a percentage of the USA.
This is what the data looks like:
head(pwt) country isocode year rgdpo pop ESP-1950 Spain ESP 1950-01-01 85002.27 27.99278 ESP-1951 Spain ESP 1951-01-01 100241.94 28.22724 ESP-1952 Spain ESP 1952-01-01 105170.11 28.47847 ESP-1953 Spain ESP 1953-01-01 101322.59 28.73209 ESP-1954 Spain ESP 1954-01-01 114573.78 28.98774 ESP-1955 Spain ESP 1955-01-01 120839.95 29.24542
The variable of interest here, "Real GDP Per Capita", is obtained as
Sadly I didn't get very far. I know how to select a whole column, e.g.
pwt$rgdpo, but then not sure how to restrict this to a particular country without completely dismantling the data frame. (I would know how to create variables for each country by using the subset function and then creating the relative variable by dividing and then recreating a dataframe and then plotting, but I would like to learn the smart way to do things here).
I'd like the solution to be robust to the presence of NAs or to a missing date (missing dates could be replaced by NAs)
I have used ggplot2 in my example, but I'm open minded to a base-R solution too (authors: Hadley Wickham, Winston Chang, http://cran.r-project.org/web/packages/ggplot2/).
To obtain a reproducible example, I am getting data from the pwt8 package (author: Achim Zeileis, http://cran.r-project.org/web/packages/pwt8/).
# Get data # install.packages("pwt8") library("pwt8") data("pwt8.0") # names(pwt8.0) # use -subset- to get specifc countries and variables. countries <- c("USA", "ESP", "ITA") variables <- c("country", "isocode", "year", "rgdpo", "pop") pwt <- subset(pwt8.0, isocode %in% countries, select = variables) # Plot GDP PER CAPITA with ggplot library("ggplot2") pwt$year<-as.Date(paste0(pwt$year,"-01-01"),format="%Y-%m-%d") # year as Date ggp <- ggplot(pwt,aes(x=year,y=rgdpo/pop,color=as.factor(isocode),group=isocode)) + geom_line() ggp <- ggp + xlab("") + ylab("") + ggtitle("Real GDP Per Capita (international $, 2005 prices, chain)") + theme(legend.title = element_blank() ) + coord_trans(y = "log10") ggp <- ggp + coord_cartesian(xlim=as.Date(c("2000-01-01","2012-01-01")),ylim=c(22000,45000)) ggp
Solution: thanks to Hong Ooi!
require("plyr") pwt <- ddply(pwt, .(country), transform, gdppc.usa=(rgdpo/pop)/within(subset(pwt, isocode=="USA"),gdppc<-rgdpo/pop)$gdppc) library("ggplot2") ggp <- ggplot(subset(pwt,isocode==c("ESP","ITA")),aes(x=year,y=gdppc.usa,color=as.factor(isocode),group=isocode)) + geom_line() ggp <- ggp + xlab("") + ylab("") + ggtitle("Real GDP Per Capita Relative to USA (international $, 2005 prices, chain)") + theme(legend.title = element_blank() ) ggp