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I have time series data (I've posted it here as a data.frame):

x <- structure(list(date = structure(c(1264572000, 1266202800, 1277362800, 
1277456400, 1277859600, 1278032400, 1260370800, 1260892800, 1262624400, 
1262707200), class = c("POSIXt", "POSIXct"), tzone = ""), data = c(-0.00183760994446658, 
0.00089738603087497, 0.000423513598318936, 0, -0.00216496690393131, 
-0.00434836817931339, -0.0224199153445617, 0.000583823085470003, 
0.000353088613905206, 0.000470295331234771)), .Names = c("date", 
"data"), row.names = c("1", "2", "3", 
"4", "5", "6", "7", "8", "9", "10"
), class = "data.frame")

What's the best way to plot this as a bar plot in ggplot that would show the total value per month (with the month name as text)?

I can do this manually by adding a month field:

x$month <- format(x$date, format="%B")
ddply(x, .(month), function(x) sum(x[, "data"]))

Then plotting this independently, but the months are not ordered correctly using this approach (suppose that I need to create an ordered factor?); I am also presuming that there's an "easier" way with ggplot.

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1 Answer

up vote 6 down vote accepted

I am by no means an expert with time series data, but this code worked for me:

#The binning by month, saving as a date
x$month <- as.Date(cut(x$date, breaks = "month"))

#Plotting
p <- ggplot(x, aes(month, data))+
     stat_summary(fun.y = sum, geom = "bar")

#My suggestions for display
minmax <- max(abs(x$data))

p + geom_hline(y = 0)+
    scale_x_date(minor = "month")+
    ylim(-minmax, minmax)
    # or more ggplot2 accurately
    #+coord_cartesian(ylim = c(-minmax, minmax))

With my suggestions, you end up highlighting zero with a line, and the y-axes are symmetrical around 0. I changed the x-axis minor gridlines to "month", because the bar for each month extended a few weeks in each direction, which isn't actually meaningful for how the data is aggregated.

Edit: Of course, most of this code was just to create the monthly sums. If your date data is in a date format, the date scales are automatically used for the axes. To change up the major x breaks and their format, you do so with scale_x_date()

p + scale_x_date(major = "month", format = "%b")
#or
p + scale_x_date(major = "month", format = "%B %Y")

See ?strftime for details on what the format strings mean.

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