Function estimates CES in state space form with information potential equal to errors and returns several variables.
ces(data, seasonality = c("none", "simple", "partial", "full"),
initial = c("optimal", "backcasting"), A = NULL, B = NULL,
ic = c("AICc", "AIC", "BIC", "BICc"), cfType = c("MSE", "MAE", "HAM",
"MSEh", "TMSE", "GTMSE", "MSCE"), h = 10, holdout = FALSE,
cumulative = FALSE, intervals = c("none", "parametric",
"semiparametric", "nonparametric"), level = 0.95,
intermittent = c("none", "auto", "fixed", "interval", "probability",
"sba", "logistic"), imodel = "MNN", bounds = c("admissible", "none"),
silent = c("all", "graph", "legend", "output", "none"), xreg = NULL,
xregDo = c("use", "select"), initialX = NULL, updateX = FALSE,
persistenceX = NULL, transitionX = NULL, ...)
Vector or ts object, containing data needed to be forecasted.
The type of seasonality used in CES. Can be: none
- No seasonality; simple
- Simple seasonality, using lagged CES
(based on t-m
observation, where m
is the seasonality lag);
partial
- Partial seasonality with real seasonal components
(equivalent to additive seasonality); full
- Full seasonality with
complex seasonal components (can do both multiplicative and additive
seasonality, depending on the data). First letter can be used instead of
full words. Any seasonal CES can only be constructed for time series
vectors.
Can be either character or a vector of initial states. If it
is character, then it can be "optimal"
, meaning that the initial
states are optimised, or "backcasting"
, meaning that the initials are
produced using backcasting procedure.
First complex smoothing parameter. Should be a complex number.
NOTE! CES is very sensitive to A and B values so it is advised either to leave them alone, or to use values from previously estimated model.
Second complex smoothing parameter. Can be real if
seasonality="partial"
. In case of seasonality="full"
must be
complex number.
The information criterion used in the model selection procedure.
Type of Cost Function used in optimization. cfType
can
be: MSE
(Mean Squared Error), MAE
(Mean Absolute Error),
HAM
(Half Absolute Moment), TMSE
- Trace Mean Squared Error,
GTMSE
- Geometric Trace Mean Squared Error, MSEh
- optimisation
using only h-steps ahead error, MSCE
- Mean Squared Cumulative Error.
If cfType!="MSE"
, then likelihood and model selection is done based
on equivalent MSE
. Model selection in this cases becomes not optimal.
There are also available analytical approximations for multistep functions:
aMSEh
, aTMSE
and aGTMSE
. These can be useful in cases
of small samples.
Finally, just for fun the absolute and half analogues of multistep estimators
are available: MAEh
, TMAE
, GTMAE
, MACE
, TMAE
,
HAMh
, THAM
, GTHAM
, CHAM
.
Length of forecasting horizon.
If TRUE
, holdout sample of size h
is taken from
the end of the data.
If TRUE
, then the cumulative forecast and prediction
intervals are produced instead of the normal ones. This is useful for
inventory control systems.
Type of intervals to construct. This can be:
none
, aka n
- do not produce prediction
intervals.
parametric
, p
- use state-space structure of ETS. In
case of mixed models this is done using simulations, which may take longer
time than for the pure additive and pure multiplicative models.
semiparametric
, sp
- intervals based on covariance
matrix of 1 to h steps ahead errors and assumption of normal / log-normal
distribution (depending on error type).
nonparametric
, np
- intervals based on values from a
quantile regression on error matrix (see Taylor and Bunn, 1999). The model
used in this process is e[j] = a j^b, where j=1,..,h.
The parameter also accepts TRUE
and FALSE
. The former means that
parametric intervals are constructed, while the latter is equivalent to
none
.
If the forecasts of the models were combined, then the intervals are combined
quantile-wise (Lichtendahl et al., 2013).
Confidence level. Defines width of prediction interval.
Defines type of intermittent model used. Can be: 1.
none
, meaning that the data should be considered as non-intermittent;
2. fixed
, taking into account constant Bernoulli distribution of
demand occurrences; 3. interval
, Interval-based model, underlying
Croston, 1972 method; 4. probability
, Probability-based model,
underlying Teunter et al., 2011 method. 5. auto
- automatic selection
of intermittency type based on information criteria. The first letter can be
used instead. 6. "sba"
- Syntetos-Boylan Approximation for Croston's
method (bias correction) discussed in Syntetos and Boylan, 2005. 7.
"logistic"
- the probability is estimated based on logistic regression
model principles.
Type of ETS model used for the modelling of the time varying probability. Object of the class "iss" can be provided here, and its parameters would be used in iETS model.
What type of bounds to use in the model estimation. The first letter can be used instead of the whole word.
If silent="none"
, then nothing is silent, everything is
printed out and drawn. silent="all"
means that nothing is produced or
drawn (except for warnings). In case of silent="graph"
, no graph is
produced. If silent="legend"
, then legend of the graph is skipped.
And finally silent="output"
means that nothing is printed out in the
console, but the graph is produced. silent
also accepts TRUE
and FALSE
. In this case silent=TRUE
is equivalent to
silent="all"
, while silent=FALSE
is equivalent to
silent="none"
. The parameter also accepts first letter of words ("n",
"a", "g", "l", "o").
Vector (either numeric or time series) or matrix (or data.frame)
of exogenous variables that should be included in the model. If matrix
included than columns should contain variables and rows - observations. Note
that xreg
should have number of observations equal either to
in-sample or to the whole series. If the number of observations in
xreg
is equal to in-sample, then values for the holdout sample are
produced using es function.
Variable defines what to do with the provided xreg:
"use"
means that all of the data should be used, while
"select"
means that a selection using ic
should be done.
"combine"
will be available at some point in future...
Vector of initial parameters for exogenous variables.
Ignored if xreg
is NULL.
If TRUE
, transition matrix for exogenous variables is
estimated, introducing non-linear interactions between parameters.
Prerequisite - non-NULL xreg
.
Persistence vector \(g_X\), containing smoothing
parameters for exogenous variables. If NULL
, then estimated.
Prerequisite - non-NULL xreg
.
Transition matrix \(F_x\) for exogenous variables. Can
be provided as a vector. Matrix will be formed using the default
matrix(transition,nc,nc)
, where nc
is number of components in
state vector. If NULL
, then estimated. Prerequisite - non-NULL
xreg
.
Other non-documented parameters. For example parameter
model
can accept a previously estimated CES model and use all its
parameters. FI=TRUE
will make the function produce Fisher
Information matrix, which then can be used to calculated variances of
parameters of the model.
Object of class "smooth" is returned. It contains the list of the following values:
model
- type of constructed model.
timeElapsed
- time elapsed for the construction of the model.
states
- the matrix of the components of CES. The included
minimum is "level" and "potential". In the case of seasonal model the
seasonal component is also included. In the case of exogenous variables the
estimated coefficients for the exogenous variables are also included.
A
- complex smoothing parameter in the form a0 + ia1
B
- smoothing parameter for the seasonal component. Can either
be real (if seasonality="P"
) or complex (if seasonality="F"
)
in a form b0 + ib1.
persistence
- persistence vector. This is the place, where
smoothing parameters live.
transition
- transition matrix of the model.
measurement
- measurement vector of the model.
initialType
- Type of the initial values used.
initial
- the initial values of the state vector (non-seasonal).
nParam
- table with the number of estimated / provided parameters.
If a previous model was reused, then its initials are reused and the number of
provided parameters will take this into account.
fitted
- the fitted values of CES.
forecast
- the point forecast of CES.
lower
- the lower bound of prediction interval. When
intervals="none"
then NA is returned.
upper
- the upper bound of prediction interval. When
intervals="none"
then NA is returned.
residuals
- the residuals of the estimated model.
errors
- The matrix of 1 to h steps ahead errors.
s2
- variance of the residuals (taking degrees of
freedom into account).
intervals
- type of intervals asked by user.
level
- confidence level for intervals.
cumulative
- whether the produced forecast was cumulative or not.
actuals
- The data provided in the call of the function.
holdout
- the holdout part of the original data.
imodel
- model of the class "iss" if intermittent model was estimated.
If the model is non-intermittent, then imodel is NULL
.
xreg
- provided vector or matrix of exogenous variables. If
xregDo="s"
, then this value will contain only selected exogenous
variables.
updateX
- boolean, defining, if the states of
exogenous variables were estimated as well.
initialX
- initial values for parameters of exogenous variables.
persistenceX
- persistence vector g for exogenous variables.
transitionX
- transition matrix F for exogenous variables.
ICs
- values of information criteria of the model. Includes
AIC, AICc, BIC and BICc.
logLik
- log-likelihood of the function.
cf
- Cost function value.
cfType
- Type of cost function used in the estimation.
FI
- Fisher Information. Equal to NULL if FI=FALSE
or when FI
is not provided at all.
accuracy
- vector of accuracy measures for the holdout sample. In
case of non-intermittent data includes: MPE, MAPE, SMAPE, MASE, sMAE,
RelMAE, sMSE and Bias coefficient (based on complex numbers). In case of
intermittent data the set of errors will be: sMSE, sPIS, sCE (scaled
cumulative error) and Bias coefficient. This is available only when
holdout=TRUE
.
The function estimates Complex Exponential Smoothing in the state space 2 described in Svetunkov, Kourentzes (2017) with the information potential equal to the approximation error. The estimation of initial states of xt is done using backcast.
Svetunkov, I., Kourentzes, N. (February 2015). Complex exponential smoothing. Working Paper of Department of Management Science, Lancaster University 2015:1, 1-31.
Svetunkov I., Kourentzes N. (2017) Complex Exponential Smoothing for Time Series Forecasting. Not yet published.
# NOT RUN {
y <- rnorm(100,10,3)
ces(y,h=20,holdout=TRUE)
ces(y,h=20,holdout=FALSE)
y <- 500 - c(1:100)*0.5 + rnorm(100,10,3)
ces(y,h=20,holdout=TRUE,intervals="p",bounds="a")
library("Mcomp")
y <- ts(c(M3$N0740$x,M3$N0740$xx),start=start(M3$N0740$x),frequency=frequency(M3$N0740$x))
ces(y,h=8,holdout=TRUE,seasonality="s",intervals="sp",level=0.8)
# }
# NOT RUN {
y <- ts(c(M3$N1683$x,M3$N1683$xx),start=start(M3$N1683$x),frequency=frequency(M3$N1683$x))
ces(y,h=18,holdout=TRUE,seasonality="s",intervals="sp")
ces(y,h=18,holdout=TRUE,seasonality="p",intervals="np")
ces(y,h=18,holdout=TRUE,seasonality="f",intervals="p")
# }
# NOT RUN {
# }
# NOT RUN {
x <- cbind(c(rep(0,25),1,rep(0,43)),c(rep(0,10),1,rep(0,58)))
ces(ts(c(M3$N1457$x,M3$N1457$xx),frequency=12),h=18,holdout=TRUE,
intervals="np",xreg=x,cfType="TMSE")
# }
# NOT RUN {
# Exogenous variables in CES
# }
# NOT RUN {
x <- cbind(c(rep(0,25),1,rep(0,43)),c(rep(0,10),1,rep(0,58)))
ces(ts(c(M3$N1457$x,M3$N1457$xx),frequency=12),h=18,holdout=TRUE,xreg=x)
ourModel <- ces(ts(c(M3$N1457$x,M3$N1457$xx),frequency=12),h=18,holdout=TRUE,xreg=x,updateX=TRUE)
# This will be the same model as in previous line but estimated on new portion of data
ces(ts(c(M3$N1457$x,M3$N1457$xx),frequency=12),model=ourModel,h=18,holdout=FALSE)
# }
# NOT RUN {
# Intermittent data example
x <- rpois(100,0.2)
# Best type of intermittent model based on iETS(Z,Z,N)
ourModel <- ces(x,intermittent="auto")
summary(ourModel)
forecast(ourModel)
plot(forecast(ourModel))
# }
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