I am trying to do time series modeling and forecasting using R based on weekly data like below:

```
biz week Amount Count
2006-12-27 973710.7 816570
2007-01-03 4503493.2 3223259
2007-01-10 2593355.9 1659136
2007-01-17 2897670.9 2127792
2007-01-24 3590427.5 2919482
2007-01-31 3761025.7 2981363
2007-02-07 3550213.1 2773988
2007-02-14 3978005.1 3219907
2007-02-21 4020536.0 3027837
2007-02-28 4038007.9 3191570
2007-03-07 3504142.2 2816720
2007-03-14 3427323.1 2703761
...
2014-02-26 99999999.9 1234567
```

About my data: As seen above, each week is labeled by first day for the week (my week starts on Wed. and ends on Tues).
When I construct my `ts`

object, I tried

```
ts <- ts(df, frequency=52, start=c(2007,1))
```

the problem I have is:

1) Some year may have 53 weeks, so `frequency=52`

will not work for those years;

2) My starting week/date is 2006-12-27, how should I set the start parameter? `start=c(2006,52)`

or `start=c(2007,1)`

since week of 2006-12-27 really cross the year boundary? Also, for modeling, is it better to have complete year worth of data (say for 2007 my start year if I only have partial year worth of data), is it better not to use 2007, instead to start with 2008? What about 2014: since it is not a complete year yet, should I use what I have for modeling or not? Either way, I still have an issue with whether or not to include those weeks in the year boundary like 2006-12-27. Should I include it as `wk 1`

for 2007 or the last week of 2006?

3) When I use `ts <- ts(df, frequency=52, start=c(2007,1))`

and then print it, I got the results shown below, so instead of 2007.01, 2007.02, 2007.52..., I got 2007.000, 2007.019, ..., which it gets from `1/52=0.019`

. This is mathematically correct but not really easy to interpret. Is there a way to label it as the date itself just like a data frame or at least `2007 wk1, 2007 wk2...`

=========

```
Time Series:
Start = c(2007, 1)
End = c(2014, 11)
Frequency = 52
Amount Count
2007.000 645575.4 493717
2007.019 2185193.2 1659577
2007.038 1016711.8 860777
2007.058 1894056.4 1450101
2007.077 2317517.6 1757219
2007.096 2522955.8 1794512
2007.115 2266107.3 1723002
```

4) My goal is to model this weekly data and then try to decompose it to see seasonal components. It seems like I have to use the `ts()`

function to convert to a `ts`

object sp that I can use the `decompose()`

function. I tried `xts()`

and I got an error stating `" time series has no or less than 2 periods"`

. I guess this is because `xts()`

won't let me specify the frequency, right?

```
xts <- xts(df,order.by=businessWeekDate)
```

5) I looked for the answer in this forum and other places as well; most of the examples are monthly, and though there are some weekly time series questions, none of the answers are straightforward. Hopefully somebody can help answer my questions here.