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I am new to ts(), zoo() and zooreg(). I am working with daily time series data and am having difficulties switching between zooreg and ts objects. Specifically I am wanting to fit a model to forecast the next 7 days.

Attempt #3 below appears to work, but is there a better way than using coredata? Also, I have read contradictory advice on whether the frequency of daily data in ts() objects should be 365 or 7. Attempts #1 and #2 show my unsuccessful attempts.

Thanks in advance.
Rob

#===================================
# load libraries
#===================================
require(zoo)
require(fpp)

#===================================
# create dummy dataset
#===================================
Lines <-
"2013-02-08  686160160
2013-02-09  765196250
2013-02-10          0
2013-02-11          0
2013-02-12 1208385570
2013-02-13  817502700
2013-02-14  640140270
2013-02-15  616020930
2013-02-16  735370160
2013-02-17          0
2013-02-18          0
2013-02-19          0
2013-02-20 1503211500
2013-02-21  831274360
2013-02-22  627096330
2013-02-23  721884800
2013-02-24  721884800
2013-02-25          0
2013-02-26 1169370020
2013-02-27  804955410
2013-02-28  628113780
2013-03-01  654291400
2013-03-02  815497620
2013-03-03          0
2013-03-04          0
2013-03-05 1406186740
2013-03-06  992812660
2013-03-07  768179720
2013-03-08  712639690
2013-03-09  795140640
2013-03-10          0
2013-03-11          0
2013-03-12 1230958890
2013-03-13  851839940
2013-03-14  667805530
2013-03-15          0
2013-03-16 1383085620
2013-03-17          0
2013-03-18          0
2013-03-19 1181950630
2013-03-20  828667350
2013-03-21  637237160
2013-03-22  615793920
"

#===================================
# read data in as zoo object
#===================================
a.zoo <- read.zoo(textConnection(Lines),
 col.names = c("dates", "counts"), 
 colClasses = c("character", "numeric"),
 index = 1, format = "%Y-%m-%d")

#===================================
# attempt #1
#===================================

length(a.zoo)               # length is 43
a.ts <- as.ts(a.zoo)            # convert to ts object
length(a.ts)                # length is 43

# decompose a time series into seasonal, trend and irregular components using loess
frequency(a.ts)             # frequency is 1
stl(a.ts, s.window=7)           # gives error saying frequency < 2

#===================================
# attempt #2
#===================================

# add frequency of 365 to represent daily data
b.zooreg <- zoo(a.zoo, frequency = 365)     
frequency(b.zooreg)             # frequency is 365
str(b.zooreg)               # length is 43, frequency = 365
b.ts <- as.ts(b.zooreg)         # convert to ts object
length(b.ts)                # length is NA padded to 15331

#===================================
# attempt #3
#===================================

# seems like a hack but works
ts2 <- ts(coredata(a.zoo),frequency=7,start=start(a.zoo))
ts2                     # shows correct frequency and length
                        # strange "Start = c(15744, 1)" though

stl(ts2, s.window=7)            # seems to work
plot(forecast(ts2))
share|improve this question
1  
check out this thread: STL trend of time series using R, it might be helpful. –  Doctor Dan Jul 22 '13 at 20:32
    
Any other thoughts on this? –  Rob Jan 22 at 22:01
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