Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I'm not used to working with time series data in R, and I'm a bit stuck with this. I have a data frame of event references and the data the event was recorded. The data runs over a period of 7 years and want to summarise it into the number of event per month over the 7 year period and plot that with ggplot2.

I can't seem to get the date conversions to work together so I end up with a count and a date I can feed to ggplot2's scale_x_date() function

Here's an example of the data:

df <- structure(list(Ref = structure(c(127L, 33L, 232L, 392L, 490L, 
242L, 437L, 346L, 443L, 560L, 598L, 568L, 103L, 262L, 463L, 17L, 
114L, 276L, 361L, 422L), .Label = c("01090013", "0109005", "0109006", 
"0109007", "0109009", "0109010", "0109011", "0109012", "0109014", 
"0109016", "0109022", "0110001", "0110004", "0110007", "0110009", 
"0110011", "0111001", "0111002", "0111012", "0111016", "0111017", 
"0112001", "0112003", "0112008", "0112010", "015004", "015006", 
"015008", "015010", "015013", "016002", "016003", "016004", "016005", 
"016006", "016008", "016009", "016010", "016011", "016013", "016014", 
"016016", "017001", "018001", "018004", "018005", "018007", "018008", 
"018009", "020626", "0209024", "0209025", "0209026", "0209027", 
"0209029", "0209031", "0209035", "0209037", "02100020", "0210017", 
"0210018", "0210023", "0210026", "0210030", "0211018", "0211019", 
"0211020", "0211022", "0211024", "0211025", "0211026", "0212018", 
"0212021", "0212025", "0212027", "025018", "025021", "025022", 
"025023", "025024", "025025", "025026", "025030", "026019", "026020", 
"026021", "026023", "026025", "026027", "026030", "026032", "0270010", 
"027010", "027012", "027013", "027014", "027016", "027017", "0309038", 
"0309039", "0309041", "0309046", "0309050", "0309052", "0309053", 
"0310035", "0310037", "0310041", "0310043", "0310044", "0311028", 
"0311032", "0311035", "0311038", "0312031", "0312036", "0312037", 
"0312043", "0312045", "0312047", "0312056", "0312058", "0312059", 
"0312062", "035033", "035034", "035036", "035037", "035038", 
"035040", "035041", "035042", "035043", "035045", "035049", "036036", 
"036038", "036039", "036041", "036042", "036044", "036045", "036046", 
"036047", "036048", "036050", "036051", "037021", "037026", "037029", 
"038026", "038032", "038034", "038035", "038036", "0409056", 
"0409057", "0409062", "0410046", "0410049", "0410050", "0410051", 
"0410054", "0410055", "0410056", "0410057", "0410058", "0410060", 
"0410062", "0410064", "0411047", "0411051", "0411052", "0411055", 
"0412070", "0412074", "0412075", "0412076", "045054", "045056", 
"045058", "045063", "045064", "045065", "045072", "046054", "046055", 
"046058", "046060", "047035", "047036", "047037", "047038", "047041", 
"047042", "047044", "047045", "047046", "048040", "048043", "048044", 
"048045", "048048", "048050", "048051", "0509073", "0509080", 
"0510066", "0510067", "0510082", "0511062", "0511065", "0511068", 
"0511069", "0511072", "0512084", "0512088", "0512089", "0512091", 
"055073", "055075", "055080", "055086", "055089", "055091", "055093", 
"055094", "055095", "056064", "056066", "056067", "056068", "056070", 
"056071", "056073", "056074", "057049", "057052", "057053", "057054", 
"057058", "057059", "057060", "057061", "057063", "057065", "057066", 
"057067", "057068", "057069", "058053", "058055", "058056", "058059", 
"058062", "058064", "0609082", "0609086", "0609088", "0609089", 
"0609090", "0609093", "0609095", "0609096", "0609097", "0609098", 
"0609103", "0610086", "0610089", "0610095", "0610096", "0610098", 
"0611073", "0611074", "0611080", "0611081", "0612109", "0612115", 
"065096", "065099", "065103", "065105", "065106", "065109", "065114", 
"066075", "066076", "066077", "066078", "066081", "066083", "067080", 
"067081", "067084", "068065", "068070", "068074", "0709106", 
"0709108", "0709113", "0709115", "0709116", "0709117", "0709120", 
"0710104", "0710105", "0710107", "0710108", "0710110", "0710115", 
"0710116", "0710117", "0710123", "0711083", "0711084", "0711085", 
"0711086", "0711087", "0711088", "0711092", "0712122", "0712126", 
"0712127", "0712128", "0712129", "075118", "075119", "075123", 
"075124", "075125", "075126", "075127", "075130", "075132", "075133", 
"076084", "076087", "076088", "076090", "076092", "076093", "076094", 
"077103", "077105", "078079", "078080", "078081", "078082", "078085", 
"078086", "0809126", "0809134", "0809137", "0809141", "0809143", 
"0810125", "0810137", "0811099", "0811101", "0811106", "0811108", 
"0811112", "0811113", "0811114", "0812142", "0812145", "0812150", 
"0812152", "0814143", "085139", "085143", "085145", "085148", 
"085149", "085150", "085154", "085156", "085160", "085163", "086098", 
"086099", "086100", "086101", "086102", "086104", "086107", "086108", 
"086109", "086110", "086111", "086112", "086114", "086115", "087106", 
"087107", "087109", "087112", "088094", "088096", "088097", "088098", 
"0909145", "0909155", "0909158", "0910145", "0910146", "0910147", 
"0910149", "0910150", "0910153", "0910154", "0911116", "0911117", 
"0911120", "0911121", "0911122", "0911123", "0911124", "0911130", 
"0911131", "0912161", "0912163", "0912168", "0912171", "0912172", 
"095166", "095167", "095170", "095171", "095172", "095178", "095180", 
"096116", "096117", "096121", "097120", "097124", "097125", "097126", 
"097132", "097133", "097136", "098110", "098115", "098116", "098119", 
"100006825", "100006830", "1009160", "1009161", "1009162", "1009164", 
"1009165", "1009166", "1009169", "1009170", "1009172", "1009173", 
"1009174", "1010160", "1010162", "1010163", "1010164", "1010166", 
"1010168", "1011133-A", "1011134", "1011140", "1011142", "1012179", 
"1012184", "1012185", "1012194", "105185", "105186", "105187", 
"105188", "105189", "105191", "105192", "105196", "105197", "105198", 
"105199", "105201", "105202", "105207", "105208", "105211", "106127", 
"106130", "106131", "107138", "107140", "107143", "107147", "107148", 
"107149", "107153", "107155", "107156", "108122", "108123", "108127", 
"108129", "108130", "108131", "108132", "108134", "108135", "108136", 
"1109175", "1109176", "1109180", "1109182", "1110173", "1110176", 
"1110177", "1110178", "1110185", "1110186", "1111145", "1111150", 
"1111151", "1112196", "1112197", "1112201", "1112202", "1112206", 
"1112208", "1112209", "1112212", "1112218", "1112220", "1112223", 
"1112225", "1112226", "1112227", "115215", "115216", "115217", 
"115218", "115219", "115223", "115225", "115226", "116139", "116143", 
"116144", "116145", "117161", "117162", "117164", "117165", "117168", 
"117175", "117180", "118139", "118140", "118143", "118147", "118148", 
"118150", "118152", "118154", "118157", "118160", "118161", "1209188", 
"1209189", "1209191", "1209193", "1209199", "1210191", "1210193", 
"1211157", "1211158", "1211168", "1211169", "1211170", "1211171", 
"1211173", "1212233", "1212235", "1212240", "125231", "125238", 
"125241", "126147", "126149", "127182", "127183", "127186", "127187", 
"127192", "127194", "128165", "128168", "128169", "128171", "128172", 
"128175", "128176", "128177", "128182", "128183", "128184", "128186", 
"128189", "128193"), class = "factor"), Date = structure(c(12846, 
13154, 13284, 13391, 13434, 13655, 13766, 14067, 14119, 14183, 
14209, 14211, 14322, 14412, 14897, 14960, 15049, 15155, 15201, 
15597), class = "Date")), .Names = c("Ref", "Date"), row.names = c(NA, 
-20L), class = "data.frame")

This is driving me crazy!

Thanks H

share|improve this question
    
OK. That's an example of data, but you have not described what you want to do with it. – 42- Mar 3 '13 at 0:47
    
The clue is in the title, but I think this pretty much gives it away "The data runs over a period of 7 years and [I] want to summarise it into the number of event per month over the 7 year period and plot that with ggplot2." – Hassantm Mar 3 '13 at 1:22
    
By month or by yr-month? – 42- Mar 3 '13 at 5:55
up vote 7 down vote accepted

I believe you are looking for this:

df <- transform(df, month = format(Date,"%m"), year = format(Date, "%Y"))

counts <- ddply(df,.(month,year),nrow)

Then to plot the date:

# make a new monthly date
counts <- transform(counts, new_date = as.Date(paste(year,month,'01',sep="-")))

# now plot
ggplot(counts,aes(x=new_date,y=V1)) + geom_point() + scale_x_date()
share|improve this answer

Another option:

data$Month <-  format(as.POSIXct(data$Date), "%Y-%m")
by.month.count <- data.frame(with(data, table(Month)))
share|improve this answer

xts package is very handy for time series manipulations.

First I create the xts object :

 library(xts)
 dat.xts <- xts(df$Ref,order.by=as.POSIXct(df$Date))

Then I use apply.monthly to get the count by day, and plot it as xts object

count.month <- apply.monthly(dat.xts,FUN=length)
plot(count.month, type='b')

enter image description here

If you want to use ggplot2, you can transform the result to a data.frame.

as.data.frame(count.month)
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.