## New answers tagged forecasting

0

Are you familiar with the add-in solver or Data Analysis? Sometimes you have to unhide it by going to options>add-in>"Data Analysis" to use it but it does simple analyses. You will find several helpful tools for doing stats in "Data Analysis."

2

You need to specify the h parameter in the call to holt(), not in the call to forecast().
holt() fits a model and computes the forecast. This is in contrast to "typical" R usage and other forecasting-related functions, like ets(), arima() etc. So you don't even need to call forecast() on the output of holt():
> print(holt(airmiles,h=15))
Point ...

2

It's difficult to know without your data, so here's a reproducible example process that shows windowing as well as the use of the horizon parameter. This works if the attribute to be used as a label is already a label.
<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<process version="7.0.001">
<context>
<input/>
...

1

Here's how you can return your model
Acc_res<-do.call(rbind,TestAcc)
res_num <- which(Acc_res==min(Acc_res))
res_model<-ModFit[[res_num]]
class(res_model)
Let me know if that is what you need. Last line is just for verifying that it is indeed the right class.

0

Using expand.grid and alply as apply will simplify to a matrix of arima objects which will be a pain
pvar<-1:15
dvar<-1:2
qvar<-1:15
OrderGrid<-expand.grid(pvar,dvar,qvar)
ModFit <- function(x, dat){
m=Arima(dat, order=c(x[[1]], x[[2]], x[[3]]))
return(m)
}
Fits <- plyr::alply(OrderGrid, 1, ModFit, dat = tsTrain)
...

4

Understanding ets()
The ets() function is an exponential smoothing technique for state space models. By default, the ets() function will attempt to automatically fit a model to a time series via model = 'ZZZ' using the supplied frequency= parameter. This is particularly problematic as an incorrectly specified frequency= will cause a non-ideal model to be ...

0

Take a look at ?arima. For example:
mar=arima(product$Qty,order = c(1,0,1))
f_ar=forecast(mar, h=28)
plot(f_ar)
Your data appears to have seasonality, try to use that information in the ets or arima models.

1

Please mention what software you are using? Assuming you are using R Studio:
summary(arima(x, order=c(1,0,0))$coefficients
Put your dataset in place of "x".

1

This is a bug, now reported on the github site for the package.
Here is a workaround for a simple example.
t <- seq(0,5,by=1/20)
x <- exp(sin(2*pi*t) + cos(2*pi*t*4) + rnorm(length(t),0,.1))
fc <- dshw(x,20,5)
tspx <- tsp(fc$x)
tspm <- tsp(fc$mean)
tsp(fc$mean)[1:2] <- tspm[1:2] - tspm[1] + tspx[2]+1/tspx[3]
plot(fc)

2

The meteorological data was retrieved from Meteogalicia using the meteoForecast package. The output power was obtained from actual measurements of private PV plants. We are not allowed to publish these datasets, but the package is designed to work with almost any file.
Both meteorological data and power measurements were combined to be used as
input to the ...

0

This is entirely problem dependent. We have no knowledge of what your problem even is, let alone data quality, amount, familiarity what how modern Rapid Miner's NN facilities are, validation / test set construction, and other potential issues.
my intuition is telling me that a 14% error in the model validation doesn't necessarily correspond to a 14% ...

0

Gabe is correct. You need future values of your causals.
You should consider the Transfer Function modeling process instead of regression(ie developed for use with cross-sectional data). By using prewhitening your X variables (ie build a model for each one), you can calculate the Cross correlation function to see any lead or lag relationship.
It is ...

0

forecast() Function is only for uni-variate data not for multivariate approaches

2

Time Series in R
The ts() object has a few limitations. Most notably, it doesn't accept time stamps per observation. Instead, it requests a start and freq (the end is optional). Furthermore, the freq capabilities are limited to viewing data in terms of seasons.
Type Frequency
Annual 1
Quarterly 4
Monthly 12
Weekly 52
Thus, to generate the ...

0

Alex, Why are you assuming that Mitsubishi has an impact on Y. Bad things happen when you force uncorrelated data together. I plotted the Y and X in a normalized scatterplot with X shifted down 3 periods(ie losing the first 3 observatiions). This doesn't look correlated which might be part of your problem.
The Mitsubishi data had a major decrease at ...

0

I don't get the same coefficients. What did I do wrong? (tried with all methodes (CSS, ML, CSS-ML))
arimaPROF<-auto.arima(PROF.ts, stepwise=FALSE, approximation=FALSE)
Series: PROF.ts
ARIMA(3,0,0)(0,1,1)[12] with drift
Coefficients:
ar1 ar2 ar3 sma1 drift
-0 -0 0 -1 423505
s.e. 0 0 0 1 37181
...

0

Not in PROC ARIMA. It only handles the univariate case.
You need to look at PROC VARMAX (Vector Autoregression Moving Average with Exongenous Variables).
http://support.sas.com/documentation/cdl/en/etsug/68148/HTML/default/viewer.htm#etsug_varmax_overview.htm
Another option would be PROC MODEL (the Swiss Army Knife of ETS).
...

1

Not sure if you ever figured this out, but just in case I thought I'd point out what's going wrong.
The documentation for forecast.lm says:
An optional data frame in which to look for variables with which to predict. If omitted, it is assumed that the only variables are trend and season, and h forecasts are produced.
so it's optional if trend and ...

0

Firstly, something seems off in the forecast output you posted; it starts at point 191 which means the fitted series ended at 190, but that doesn't seem right given the code you posted.
Regardless, DatamineR is correct in his comment. You are providing two time series with different ranges of time. The forecast function will pick up where the fitted time ...

2

You have two options.
You can tell nnetar to use more orders (if you print fit you'll see it only used one lag in your example).
fit <- nnetar(Y, p=5)
plot(forecast(fit,h=30))
You can add the trend directly to the model as an external regressor with the xreg argument. Note that you also need to provide that argument for the forecast (the values I ...

2

For crost in the tsintermittent package you need a second flag to not optimise the initial values: init.opt=FALSE, so the command should be:
crost(x,w=0.1,init=c(2,2),init.opt=FALSE)
Setting only init=c(2,2) will only set the initial values for the optimiser to work from.
Also note that the time series that Rob Hyndman has in his example has two ...

1

Start and end are the starting and ending points you wish to forecast. So this might be start = '2012-07-31' and end = '2012-09-01'.
Regarding params - when .fit() is called, an ARIMAResults class is returned. This class' predict method does not require the params argument: start and end should be all that's needed.
For your second question, this answer ...

1

accuracy(forecast(lm.fit, newdata=Auto[-train,]), Auto$mpg[-train])[,2]^2

0

In researching this over the past week or so, I wanted to post my solution that I arrived at for anyone looking into this in the future. I found some material posted by Rob Hyndman (researcher in this area from Melbourne). I found that in one of his lectures he recommends using the auto.arima() function for items such as these. I sent. Dr. Hyndman a note and ...

0

I'm not very sure about the rest, but I came across an answer for the first question recently.
Check out this website - http://robjhyndman.com/hyndsight/smape/
The example given there is presented below -
"Armstrong and Collopy (1992) argued that the MAPE "puts a heavier penalty on forecasts that exceed the actual than those that are less than the ...

1

One uses optimized parameters, the other does not. forecast::croston fits two ETS(A,N,N) models to the non-zero demand series and the times between non-zero demands, with a common smoothing parameter (alpha=0.1 is the default), and initial states set to the first values of each series. tsintermittent::crost fits the same two models, but optimizes the value ...

0

Thank you Andrie and Rob for your helpful suggestions. I have fixed the problem, but not sure how. I installed an update to RStudio and reinstalled the forecast library and it worked! Maybe something got messed up recently.
Also, I want to take this opportunity to thank you, Rob, for developing this extremely useful R package.

2

A non-CSE formula that works with empty cells and cells containing ="" is
=SUMPRODUCT(ABS(N(+A2:B5))*(A2:B5<>""))/COUNT(A2:B5)
or because the cells which are empty or have quotes in them do not contribute to the sum,
=SUMPRODUCT(ABS(N(+A2:B5)))/COUNT(A2:B5)
See this useful answer and also this

1

Try the following array formula:
=AVERAGE(IF(A2:B5<>"",ABS(A2:B5)))
Being an array formula it must be confirmed with Ctrl-Shift-Enter. If done properly Excel will automatically put {} around the formula.

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