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I got a data frame object that looks the following way:

Date        dax_data.csv    nikkei_data.csv spx_data.csv
2013-03-15  NA              NA              1560.70
2013-03-14  NA              NA              1563.23
2013-03-13  NA              NA              1554.52
2013-03-12  NA              NA              1552.48
2013-03-11  NA              NA              1556.22
2013-03-08  8020.36         12283.62        1551.18

...

1984-01-04  4533.21         9927.00         900.42
1984-01-05  NA              9947.00         NA
1984-01-06  NA              9961.00         NA

I want to do the following steps:

  • Reduce the data frame to only cover the date range where all the datasets have values. In this example from 1984-01-04 to 2013-03-08 (cant be hardcoded, needs to be dynamical and all the NAs in between need to be kept).

  • The frequency of the data needs to be weekly, the first value should be the oldest value in the dataframe. I.e. in this example 1984-01-04.

  • The data frame object needs to be converted to a timeSeries object.

Thanks in advance!

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2 Answers 2

You don't explain how your data will be reduced to weekly frequency. I mean do you take any value from the week? or do you take the mean of values?...

Here an option using xts package , convenient for this manipulations specially for financial time series.

library(xts)
dat.ts <- xts(dat[,-1],as.POSIXct(dat$Date))
dat.ts[endpoints(dat.ts,'weeks')]

           dax_data.csv nikkei_data.csv spx_data.csv
1984-01-06           NA            9961           NA
2013-03-11           NA              NA      1556.22
2013-03-15           NA              NA      1560.70
share|improve this answer
    
Thanks for the answer. I was going to take any value from the week, if no one suggests anything else, I was going to do: t+5 –  Spurious Mar 16 '13 at 11:48
    
@Spurious I don't get your point. What do you mean by t+5? –  agstudy Mar 16 '13 at 11:53
    
Basically from the first date, always adding 5 days. Your script didnt work I think. The output is not trimmed and still has daily values. –  Spurious Mar 16 '13 at 11:56
    
@Spurious my output is weekly one. What do you get when you test it in you real data? and for adding five days , you need just to add 5 to endpoints result. dat.ts[endpoints(dat.ts,'weeks')+5] –  agstudy Mar 16 '13 at 11:59
    
when I write your code to a csv, I still got the same data as before. Neither weekly data nor trimmed. Is tehre anything else, you need me to post to get a better indication? –  Spurious Mar 16 '13 at 12:06

We read in the data using read.zoo and trim all NA rows at the beginning and end using na.trim. (Note that read.zoo can also "read" data frames and files.)

Then we aggregate all rows having the same value for nextfri (which is defined in the zoo Quick Reference vignette). nextfri takes a Date vector and for each component returns the next Friday (or the same Date if its already Friday). The actual aggregation function is tail1 (the last row in each week) but we could have substituted any other reasonable aggregation function such as mean. (See ?aggregate.zoo).

Lastly we convert the "zoo" time series to a "timeSeries" time series. Depending on what you intend to do next you might not need this last step.

Lines <- "
Date        dax_data.csv    nikkei_data.csv spx_data.csv
2013-03-15  NA              NA              1560.70
2013-03-14  NA              NA              1563.23
2013-03-13  NA              NA              1554.52
2013-03-12  NA              NA              1552.48
2013-03-11  NA              NA              1556.22
2013-03-08  8020.36         12283.62        1551.18
1984-01-04  4533.21         9927.00         900.42
1984-01-05  NA              9947.00         NA
1984-01-06  NA              9961.00         NA
"

library(zoo)

z.raw <- read.zoo(text = Lines, header = TRUE)
z <- na.trim(z, is.na = "all")

nextfri <- function(x) 7 * ceiling(as.numeric(x-5+4) / 7) + as.Date(5-4)
tail1 <- function(x) tail(x, 1)
z.wk <- aggregate(z, nextfri, tail1)

library(timeSeries)
as.timeSeries(z.wk)
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