# Forecasting time series data

I've done some research and I am stuck in finding the solution. I have a time series data, very basic data frame, let's call it `x`:

``````Date        Used
11/1/2011   587
11/2/2011   578
11/3/2011   600
11/4/2011   599
11/5/2011   678
11/6/2011   555
11/7/2011   650
11/8/2011   700
11/9/2011   600
11/10/2011  550
11/11/2011  600
11/12/2011  610
11/13/2011  590
11/14/2011  595
11/15/2011  601
11/16/2011  700
11/17/2011  650
11/18/2011  620
11/19/2011  645
11/20/2011  650
11/21/2011  639
11/22/2011  620
11/23/2011  600
11/24/2011  550
11/25/2011  600
11/26/2011  610
11/27/2011  590
11/28/2011  595
11/29/2011  601
11/30/2011  700
12/1/2011   650
12/2/2011   620
12/3/2011   645
12/4/2011   650
12/5/2011   639
12/6/2011   620
12/7/2011   600
12/8/2011   550
12/9/2011   600
12/10/2011  610
12/11/2011  590
12/12/2011  595
12/13/2011  601
12/14/2011  700
12/15/2011  650
12/16/2011  620
12/17/2011  645
12/18/2011  650
12/19/2011  639
12/20/2011  620
12/21/2011  600
12/22/2011  550
12/23/2011  600
12/24/2011  610
12/25/2011  590
12/26/2011  750
12/27/2011  750
12/28/2011  666
12/29/2011  678
12/30/2011  800
12/31/2011  750
``````

I really appreciate any help with this. I am working with time series data and need to be able to create forecast based on historical data.

1. First I tried to convert it to `xts`:

``````x.xts <- xts(x\$Used, x\$Date)
``````
2. Then, I converted `x.xts` to regular time series:

``````x.ts <- as.ts(x.xts)
``````
3. Put the values in `ets`:

``````x.ets <- ets(x.ts)
``````
4. Performed forecasting for 10 periods:

``````x.fore <- forecast(x.ets, h=10)
``````
5. `x.fore` is this:

``````   Point Forecast    Lo 80    Hi 80    Lo 95    Hi 95
87       932.9199 831.7766 1034.063 778.2346 1087.605
88       932.9199 818.1745 1047.665 757.4319 1108.408
89       932.9199 805.9985 1059.841 738.8103 1127.029
90       932.9199 794.8706 1070.969 721.7918 1144.048
91       932.9199 784.5550 1081.285 706.0153 1159.824
92       932.9199 774.8922 1090.948 691.2375 1174.602
93       932.9199 765.7692 1100.071 677.2849 1188.555
94       932.9199 757.1017 1108.738 664.0292 1201.811
95       932.9199 748.8254 1117.014 651.3717 1214.468
96       932.9199 740.8897 1124.950 639.2351 1226.605
``````
6. When I try to plot the `x.fore`, I get a graph but the x-axis is showing numbers rather than dates:

Are the steps I am doing correct? How can I change the x-axis to read show dates?

I thank you so much for any input.

-
Can you indicate what research you've done? `install.packages("forecast"); library("sos"); findFn("forecast"); findFn("forecast time-series")` –  Ben Bolker Apr 24 '12 at 16:53
Show us the code that you used to try graph the data (`?dput` can help you provide us with a reproducible example: see tinyurl.com/reproducible-000 ) ... –  Ben Bolker Apr 24 '12 at 21:10
@ben, I modified my original post. Let me know what you think? –  george willy Apr 25 '12 at 15:09

Here's what I did:

``````x\$Date = as.Date(x\$Date,format="%m/%d/%Y")
x = xts(x=x\$Used, order.by=x\$Date)
# To get the start date (305)
#     > as.POSIXlt(x = "2011-11-01", origin="2011-11-01")\$yday
##    [1] 304
# Add one since that starts at "0"
x.ts = ts(x, freq=365, start=c(2011, 305))
plot(forecast(ets(x.ts), 10))
``````

Resulting in:

What can we learn from this:

• Many of your steps can be combined reducing the number of intermediate objects you create
• The output is still not as pretty as @joran, but it is still easily readable. `2011.85` means "day number `365*.85`" (day 310 in the year).
• Figuring out the day in a year can be done by using `as.POSIXlt(x = "2011-11-01", origin="2011-11-01")\$yday` and figuring out the date from a day number can be done by using something like `as.Date(310, origin="2011-01-01")`

## Update

You can drop even more intermediate steps, since there's no reason to first convert your data into an xts.

``````x = ts(x\$Used, start=c(2011, as.POSIXlt("2011-11-01")\$yday+1), frequency=365)
# NOTE: We have only selected the "Used" variable
# since ts will take care of dates
plot(forecast(ets(x), 10))
``````

This gives exactly the same result as the image above.

## Update 2

Building on the solution provided by @joran, you can try:

``````# 'start' calculation = `as.Date("2011-11-01")-as.Date("2011-01-01")+1`
# No need to convert anything to dates at this point using xts
x = ts(x\$Used, start=c(2011, 305), frequency=365)
plot(forecast(ets(x), 10), axes = FALSE)
# Generate labels for your x-axis
a = seq(as.Date("2011-11-01"), by="weeks", length=11)
# `at` is an approximation--there's probably a better way to do this,
# but the logic is approximately 365.25 days in a year, and an origin
# date in R of `January 1, 1970`
axis(1, at = as.numeric(a)/365.25+1970, labels = a, cex.axis=0.6)
axis(2, cex.axis=0.6)
``````

Which will yield:

Part of the problem in your original code is that after you have converted your data to an `xts` object, and converted that to a `ts` object, you lose the dates in your `forecast` points.

Compare the first column (`Point`) of your `x.fore` output to the following:

``````> forecast(ets(x), 10)
Point Forecast    Lo 80    Hi 80    Lo 95    Hi 95
2012.000       741.6437 681.7991 801.4884 650.1192 833.1682
2012.003       741.6437 676.1250 807.1624 641.4415 841.8459
2012.005       741.6437 670.9047 812.3828 633.4577 849.8298
2012.008       741.6437 666.0439 817.2435 626.0238 857.2637
2012.011       741.6437 661.4774 821.8101 619.0398 864.2476
2012.014       741.6437 657.1573 826.1302 612.4328 870.8547
2012.016       741.6437 653.0476 830.2399 606.1476 877.1399
2012.019       741.6437 649.1202 834.1672 600.1413 883.1462
2012.022       741.6437 645.3530 837.9345 594.3797 888.9078
2012.025       741.6437 641.7276 841.5599 588.8352 894.4523
``````

Hopefully this helps you understand the problem with your original approach and improves your capacity with dealing with time series in R.

## Update 3

Final, and more accurate solution--because I'm avoiding other work that I should actually be doing right now...

Use the `lubridate` package for better date handling:

``````require(lubridate)
y = ts(x\$Used, start=c(2011, yday("2011-11-01")), frequency=365)
plot(forecast(ets(y), 10), xaxt="n")
a = seq(as.Date("2011-11-01"), by="weeks", length=11)
axis(1, at = decimal_date(a), labels = format(a, "%Y %b %d"), cex.axis=0.6)
abline(v = decimal_date(a), col='grey', lwd=0.5)
``````

Resulting in:

Note the alternative method of identifying the start date for your `ts` object.

-
thank you so much this was extremely helpful. –  george willy May 11 '12 at 13:29

If you don't have any preferences over a specific model, I suggest you to use one that applies to a big range of situations:

``````library(forecast)
t.ser <- ts(used, start=c(2011,1), freq=12)
t.ets <- ets(t.ser)
t.fc <- forecast(t.ets,h=10)
``````

This will give you the prediction for the next 10 months.

Being more technical, it uses Exponential Smoothing method that is a good choice for general situations. Depending on the kind of the data, there might be a better model specific to your use, but `ets` is a good general choice.

It's important to highlight that since you don't have two periods completed (less than 24 months), the model cannot detect sazonality, and therefore this won't be included on calculations.

-
how do you put these in graphs? –  george willy Apr 24 '12 at 17:40
after graphing the f.fc, I see that xaxis values are 2011.1, 2011.2, etc. How do you format xaxis to show like 1/2011 2/2012 or by even jan-2011, feb-2012 –  george willy Apr 24 '12 at 19:48

Altering the plot to show the dates is fairly easy, by simply suppressing the axes in the original plot and then drawing them yourself:

``````plot(x.fore,axes = FALSE)
axis(2)
axis(1,at = pretty(1:72,n = 6),
labels = (x\$Date[1]-1) + pretty(1:72,n = 6),
cex.axis = 0.65)
``````

-
now I have this error: x.ets <- ets(x.ts) Error in rep(alpha + beta - alpha * phi, m - 2) : invalid 'times' argument In addition: Warning message: In ets(x.ts) : I can't handle data with frequency less than 1. Seasonality will be ignored. –  george willy Apr 27 '12 at 13:40
I get this error: Error in `\$.zoo`(x, Date) : only possible for zoo series with column names –  george willy Apr 27 '12 at 13:51
@mikesmith So your response to my answer which provides code that begins where the code in your question left off (with `x.fore`) is to complain that you're getting errors in the previous steps, errors that you never mention in the question? Can you understand why your question has been down voted so often? –  joran Apr 27 '12 at 14:17
I can understand to a certain extent why this question by @mikesmith has been voted down so often, but I feel a little more forgiving, because unless you've done a couple of time-series plots in R (and from your site I can see that you've done many), I could see where it is very easy to get stuck. Not having much experience or need for using date formats in R, it did take me at least a little bit of time Googling around to figure out the different options for dealing with dates from different R packages; hopefully Mike does the same in the future rather than sacrificing so much reputation! –  Ananda Mahto Apr 28 '12 at 11:30
@mrdwab First, I should say that rereading my comment I regret its tone. My frustration was not with the ability level of the OP in R, but his ability to clearly ask questions and explain his problem. Even so, it was inappropriate of me to let that frustration bleed through into my comment. –  joran Apr 28 '12 at 14:59