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I am very new to R and trying to manipulate my data in excel before moving it into R as a csv file. I would like to use ts() for weekly data. Can you do something as simple as Month 1-12, week 1-4, year? MWY. I was thinking if I use day 1-7 as week one and so on that would be uniform and work easy for my purpose but I don't know how to write it. Using this site and another for a tutorial I came up with this:

myts <- ts(Time2012, start = c(8/3/2013,1), end = c(9/2/2013,4), frequency = 52)

is there any easy way to denote the date to show I want to count weeks?

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closed as unclear what you're asking by agstudy, Gavin Simpson, Marek Musielak, JB., Praveen Sep 20 '13 at 11:14

Please clarify your specific problem or add additional details to highlight exactly what you need. As it's currently written, it’s hard to tell exactly what you're asking. See the How to Ask page for help clarifying this question. If this question can be reworded to fit the rules in the help center, please edit the question.

    
It is unclear what are you asking. You should give a sample(reproducible example) of your input and the desired output. –  agstudy Sep 19 '13 at 19:19
    
In addition to providing a reproducible and minimal example you should describe your question a bit better. What are you aiming to produce? Why a ts object rather than (say) a zoo object? Maybe a simple data frame would work better - more context please. –  SlowLearner Sep 19 '13 at 19:38
    
Also please read this and this. Thanks. –  Henrik Sep 19 '13 at 20:06
    
In my crystal ball I see that you have a spreadsheet with three columns, Year, Month and Week. If so, I wish you all of Fortune's favours because R is terrible at interpreting dates with missing information (e.g. if you don't know at least the year and the day of the year). @SlowLearner's suggestions of zoo or a data frame might help. zoo understands irregular time series (e.g. week 1 doesn't follow 7 days after week 5), but if you need a ts object to feed to, say, forecast, it will be tricky. Try converting YMD into a pretend yyyy/mm/dd in Excel, then look at lubridate. –  nacnudus Sep 19 '13 at 22:04

2 Answers 2

A simpler way to create a set of Year, Month, Week (of month) is with lubridate.

require(lubridate)

# Your starting date, plus 52 more dates at weekly intervals
xDates <- dmy("8/3/2013") + weeks(0:52)

# A data frame of the dates, the month of the year, and the week of the month
xYMW <- data.frame(date=(xDates), month=month(xDates), week=mday(xDates) %/% 7 + 1)
xYMW[1:5, ]
        date month week
1 2013-03-08     3    2
2 2013-03-15     3    3
3 2013-03-22     3    4
4 2013-03-29     3    5
5 2013-04-05     4    1
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i would recommend a slightly different workflow, one which you will likely find has broader utility:

> end = Sys.Date()
> start = end - 365

> class

> # create the index array comprised of date objects
> ndx = seq(start, end, by='weeks')
> class(ndx)
  [1] "Date"
> length(ndx)
  [1] 53

> # create a fake data array
> x = 1:length(ndx)
> mydata = sin(x/2)

> # import a time series library 
> require(xts)

> # create the time series
> myts = xts(mydata, order.by=ndx)

> myts[1:5]
               [,1]
  2012-09-19 3.479426
  2012-09-26 3.841471
  2012-10-03 3.997495
  2012-10-10 3.909297
  2012-10-17 3.598472

> class(myts)
  [1] "xts" "zoo"

> periodicity(myts)
  Weekly periodicity from 2012-09-19 to 2013-09-18 

Alternatively, if your data is not by week, then you can create a time series having a higher resolution (eg, days) then roll it up to weeks:

> ndx = seq(start, end, by='days')

> x = 1:length(ndx)
> mydata = sin(x/2) + 3
> myts = xts(mydata, order.by=ndx)

> myts[1:5]  
             [,1]
2012-09-19 3.479426
2012-09-20 3.841471
2012-09-21 3.997495
2012-09-22 3.909297
2012-09-23 3.598472

> periodicity(myts)
    Daily periodicity from 2012-09-19 to 2013-09-19 

> # now roll-up this daily series to weeks

> require(xts)

> # first create the endpoints
> np = endpoints(myts, on='weeks')


> myts_weeks = period.apply(x=myts, INDEX=np, FUN=sum, na.rm=TRUE)
> myts_weeks[1:5]
               [,1]
  2012-09-23 18.82616
  2012-09-30 17.11212
  2012-10-07 24.93492
  2012-10-14 17.51811
  2012-10-21 23.58635

> periodicity(myts_weeks)
  Weekly periodicity from 2012-09-23 to 2013-09-19 
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