Greybox main vignette
Ivan Svetunkov
2024-12-09
There are three well-known notions of “boxes” in modelling: 1. White
box - the model that is completely transparent and does not have any
randomness. One can see how the inputs are transformed into the specific
outputs. 2. Black box - the model which does not have an apparent
structure. One can only observe inputs and outputs but does not know
what happens inside. 3. Grey box - the model that is in between the
first two. We observe inputs and outputs plus have some information
about the structure of the model, but there is still a part of
unknown.
The white boxes are usually used in optimisations (e.g. linear
programming), while black boxes are popular in machine learning. As for
the grey box models, they are more often used in analysis and
forecasting. So the package greybox
contains models that
are used for these purposes.
At the moment the package contains augmented linear model function
and several basic functions that implement model selection and
combinations using information criteria (IC). You won’t find statistical
tests in this package - there’s plenty of them in the other packages.
Here we try using the modern techniques and methods that do not rely on
hypothesis testing. This is the main philosophical point of
greybox
.
Main functions
The package includes the following functions for models
construction:
- alm() - Augmented Linear Model. This is
something similar to GLM, but with a focus on forecasting and the
information criteria usage for time series. It also supports mixture
distribution models for the intermittent data and allows adding trend to
the data via the formula.
- stepwise() - select the linear model with
the lowest IC from all the possible in the provided data. Uses partial
correlations. Works fast;
- lmCombine() - combine the linear models
into one using IC weights;
- lmDynamic() - produce model with dynamic
weights and time varying parameters based on point IC weight.
See discussion of some of these functions in this vignette below.
Models evaluation functions
- ro() - produce forecasts with a specified
function using rolling origin.
measures()
- function, returning a bunch of error
measures for the provided forecast and the holdout sample.
rmcb()
- regression on ranks of forecasting methods.
This is a fast alternative to the classical nemenyi / MCB test.
Methods
The following methods can be applied to the models, produced by
alm()
, stepwise()
, lmCombine()
and lmDynamic()
:
logLik()
- extracts log-likelihood.
AIC()
, AICc()
, BIC()
,
BICc()
- calculates the respective information
criteria.
pointLik()
- extracts the point likelihood.
pAIC()
, pAICc()
, pBIC()
,
pBICc()
- calculates the respective point information
criteria, based on pointLik.
actuals()
- extracts the actual values of the response
variable.
coefbootstrap()
- produces bootstrapped values of
parameters, taking nsim
samples of the size
size
from the data and reapplying the model.
coef()
, coefficients()
- extract the
parameters of the model.
confint()
- extracts the confidence intervals for the
parameters.
vcov()
- extracts the variance-covariance matrix of the
parameters.
sigma()
- extracts the standard deviation of the
residuals.
nobs()
- the number of the in-sample observations of
the model.
nparam()
- the number of all the estimated parameters
in the model.
nvariate()
- the number of variates (columns /
dimensions) of the resposne variable.
summary()
- produces the summary of the model.
predict()
- produces the predictions based on the model
and the provided newdata
. If the newdata
is
not provided, then it uses the already available data in the model. Can
also produce confidence
and prediction
intervals.
forecast()
- acts similarly to predict()
with few differences. It has a parameter h
- forecast
horizon - which is NULL
by default and is set to be equal
to the number of rows in newdata
. However, if the
newdata
is not provided, then it will produce forecasts of
the explanatory variables to the horizon h
and use them as
newdata
. Finally, if h
and
newdata
are provided, then the number of rows to use will
be regulated by h
.
plot()
- produces several plots for the analysis of the
residuals. This includes: Fitted over time, Standardised residuals vs
Fitted, Absolute residuals vs Fitted, Q-Q plot with the specified
distribution, Squared residuals vs Fitted, ACF of the residuals and PACF
of the residuals, which is regulated by which
parameter.
See documentation for more info: ?plot.greybox
.
detectdst()
and detectleap()
- methods
that return the ids of the hour / date for the DST / Leap year
change.
extract()
method, needed in order to produce printable
regression outputs using texreg()
function from the
texreg
package.
Distribution functions
qlaplace()
, dlaplace()
,
rlaplace()
, plaplace()
- functions for Laplace
distribution.
qalaplace()
, dalaplace()
,
ralaplace()
, palaplace()
- functions for
Asymmetric Laplace distribution.
qs()
, ds()
, rs()
,
ps()
- functions for S distribution.
qgnorm()
, dgnorm()
, rgnorm()
,
pgnorm()
- functions for the Generalised normal
distribution.
qfnorm()
, dfnorm()
, rfnorm()
,
pfnorm()
- functions for folded normal distribution.
qtplnorm()
, dtplnorm()
,
rtplnorm()
, ptplnorm()
- functions for three
parameter log normal distribution.
qbcnorm()
, dbcnorm()
,
rbcnorm()
, pbcnorm()
- functions for the
Box-Cox normal distribution.
qlogitnorm()
, dlogitnorm()
,
rlogitnorm()
, plogitnorm()
- functions for the
Logit-normal distribution.
Additional functions
graphmaker()
- produces linear plots for the variable,
its forecasts and fitted values.
xregExpander
The function xregExpander()
is useful in cases when the
exogenous variable may influence the response variable either via some
lags or leads. As an example, consider BJsales.lead
series
from the datasets
package. Let’s assume that the
BJsales
variable is driven by the today’s value of the
indicator, the value five and 10 days ago. This means that we need to
produce lags of BJsales.lead
. This can be done using
xregExpander()
:
BJxreg <- xregExpander(BJsales.lead,lags=c(-5,-10))
The BJxreg
is a matrix, which contains the original
data, the data with the lag 5 and the data with the lag 10. However, if
we just move the original data several observations ahead or backwards,
we will have missing values in the beginning / end of series, so
xregExpander()
fills in those values with the forecasts
using es()
and iss()
functions from
smooth
package (depending on the type of variable we are
dealing with). This also means that in cases of binary variables you may
have weird averaged values as forecasts (e.g. 0.7812), so beware and
look at the produced matrix. Maybe in your case it makes sense to just
substitute these weird numbers with zeroes…
You may also need leads instead of lags. This is regulated with the
same lags
parameter but with positive values:
BJxreg <- xregExpander(BJsales.lead,lags=c(7,-5,-10))
Once again, the values are shifted, and now the first 7 values are
backcasted. In order to simplify things we can produce all the values
from 10 lags till 10 leads, which returns the matrix with 21
variables:
BJxreg <- xregExpander(BJsales.lead,lags=c(-10:10))
stepwise
The function stepwise() does the selection based on an information
criterion (specified by user) and partial correlations. In order to run
this function the response variable needs to be in the first column of
the provided matrix. The idea of the function is simple, it works
iteratively the following way:
- The basic model of the first variable and the constant is
constructed (this corresponds to simple mean). An information criterion
is calculated;
- The correlations of the residuals of the model with all the original
exogenous variables are calculated;
- The regression model of the response variable and all the variables
in the previous model plus the new most correlated variable from (2) is
constructed using
lm()
function;
- An information criterion is calculated and is compared with the one
from the previous model. If it is greater or equal to the previous one,
then we stop and use the previous model. Otherwise we go to step 2.
This way we do not do a blind search, going forward or backwards, but
we follow some sort of “trace” of a good model: if the residuals contain
a significant part of variance that can be explained by one of the
exogenous variables, then that variable is included in the model.
Following partial correlations makes sure that we include only
meaningful (from technical point of view) variables in the model. In
general the function guarantees that you will have the model with the
lowest information criterion. However this does not guarantee that you
will end up with a meaningful model or with a model that produces the
most accurate forecasts. So analyse what you get as a result.
Let’s see how the function works with the Box-Jenkins data. First we
expand the data and form the matrix with all the variables:
BJxreg <- as.data.frame(xregExpander(BJsales.lead,lags=c(-10:10)))
BJxreg <- cbind(as.matrix(BJsales),BJxreg)
colnames(BJxreg)[1] <- "y"
ourModel <- stepwise(BJxreg)
This way we have a nice data frame with nice names, not something
weird with strange long names. It is important to note that the response
variable should be in the first column of the resulting matrix. After
that we use stepwise function:
ourModel <- stepwise(BJxreg)
And here’s what it returns (the object of class lm
):
ourModel
#> Time elapsed: 0.08 seconds
#> Call:
#> alm(formula = y ~ xLag4 + xLag9 + xLag3 + xLag10 + xLag5 + xLag6 +
#> xLead9 + xLag7 + xLag8, data = data, distribution = "dnorm")
#>
#> Coefficients:
#> (Intercept) xLag4 xLag9 xLag3 xLag10 xLag5
#> 17.6448055 3.3712175 1.3724166 4.6781051 1.5412071 2.3213097
#> xLag6 xLead9 xLag7 xLag8
#> 1.7075130 0.3766692 1.4024772 1.3370199
The values in the function are listed in the order of most correlated
with the response variable to the least correlated ones. The function
works very fast because it does not need to go through all the variables
and their combinations in the dataset.
All the basic methods can be used together with the final model
(e.g. predict()
, forecast()
,
summary()
etc).
Furthermore, the greybox
package implements
extract()
method from texreg
package for the
production of printable outputs from the regression, here is an
example:
texreg::htmlreg(ourModel)
Statistical models
|
Model 1
|
(Intercept)
|
17.64*
|
|
[16.05; 19.24]
|
xLag4
|
3.37*
|
|
[ 2.75; 3.99]
|
xLag9
|
1.37*
|
|
[ 0.75; 2.00]
|
xLag3
|
4.68*
|
|
[ 4.10; 5.26]
|
xLag10
|
1.54*
|
|
[ 0.98; 2.11]
|
xLag5
|
2.32*
|
|
[ 1.68; 2.96]
|
xLag6
|
1.71*
|
|
[ 1.06; 2.35]
|
xLead9
|
0.38*
|
|
[ 0.12; 0.63]
|
xLag7
|
1.40*
|
|
[ 0.75; 2.05]
|
xLag8
|
1.34*
|
|
[ 0.69; 1.98]
|
Num. obs.
|
150.00
|
Num. param.
|
11.00
|
Num. df
|
139.00
|
AIC
|
416.74
|
AICc
|
418.66
|
BIC
|
449.86
|
BICc
|
454.65
|
* 0 outside the confidence interval.
|
Similarly, you can produce pdf tables via texreg()
function from that package. Alternatively, you can use
kable()
function from knitr
package on the
summary to get a table for LaTeX / HTML.
lmCombine
lmCombine()
function creates a pool of linear models
using lm()
, writes down the parameters, standard errors and
information criteria and then combines the models using IC weights. The
resulting model is of the class “lm.combined”. The speed of the function
deteriorates exponentially with the increase of the number of variables
\(k\) in the dataset, because the
number of combined models is equal to \(2^k\). The advanced mechanism that uses
stepwise()
and removes a large chunk of redundant models is
also implemented in the function and can be switched using
bruteforce
parameter.
Here’s an example of the reduced data with combined model and the
parameter bruteforce=TRUE
:
ourModel <- lmCombine(BJxreg[,-c(3:7,18:22)],bruteforce=TRUE)
summary(ourModel)
#> The AICc combined model
#> Response variable: y
#> Distribution used in the estimation: Normal
#> Coefficients:
#> Estimate Std. Error Importance Lower 2.5% Upper 97.5%
#> (Intercept) 20.9029 0.2327 1.0000 20.4429 21.3629 *
#> x -0.0432 0.0286 0.2591 -0.0998 0.0134
#> xLag5 6.3973 0.0840 1.0000 6.2313 6.5633 *
#> xLag4 5.8467 0.0900 1.0000 5.6688 6.0245 *
#> xLag3 5.6857 0.0901 1.0000 5.5076 5.8638 *
#> xLag2 0.1251 0.0382 0.2876 0.0495 0.2006 *
#> xLag1 -0.0843 0.0342 0.2716 -0.1520 -0.0166 *
#> xLead1 -0.0906 0.0323 0.2780 -0.1545 -0.0267 *
#> xLead2 -0.0354 0.0257 0.2599 -0.0863 0.0154
#> xLead3 -0.1193 0.0342 0.2967 -0.1868 -0.0517 *
#> xLead4 -0.0067 0.0229 0.2585 -0.0520 0.0385
#> xLead5 0.1161 0.0300 0.3032 0.0568 0.1754 *
#>
#> Error standard deviation: 2.2077
#> Sample size: 150
#> Number of estimated parameters: 7.2146
#> Number of degrees of freedom: 142.7854
#> Approximate combined information criteria:
#> AIC AICc BIC BICc
#> 670.6810 671.5170 692.4015 694.4959
summary()
function provides the table with the
parameters, their standard errors, their relative importance and the 95%
confidence intervals. Relative importance indicates in how many cases
the variable was included in the model with high weight. So, in the
example above variables xLag5, xLag4, xLag3 were included in the models
with the highest weights, while all the others were in the models with
lower ones. This may indicate that only these variables are needed for
the purposes of analysis and forecasting.
The more realistic situation is when the number of variables is high.
In the following example we use the data with 21 variables. So if we use
brute force and estimate every model in the dataset, we will end up with
\(2^{21}\) = 2^21
combinations of models, which is not possible to estimate in the
adequate time. That is why we use bruteforce=FALSE
:
ourModel <- lmCombine(BJxreg,bruteforce=FALSE)
summary(ourModel)
#> The AICc combined model
#> Response variable: y
#> Distribution used in the estimation: Normal
#> Coefficients:
#> Estimate Std. Error Importance Lower 2.5% Upper 97.5%
#> (Intercept) 17.6704 0.7766 1.0000 16.1349 19.2060 *
#> xLag4 3.3755 0.3023 1.0000 2.7779 3.9732 *
#> xLag9 1.3709 0.3031 0.9998 0.7717 1.9702 *
#> xLag3 4.6859 0.2811 1.0000 4.1302 5.2417 *
#> xLag10 1.5420 0.2751 1.0000 0.9981 2.0859 *
#> xLag5 2.3225 0.3120 1.0000 1.7056 2.9394 *
#> xLag6 1.7076 0.3147 1.0000 1.0854 2.3299 *
#> xLead9 0.3639 0.1248 0.9661 0.1172 0.6106 *
#> xLag7 1.4014 0.3154 0.9997 0.7778 2.0250 *
#> xLag8 1.3362 0.3135 0.9994 0.7164 1.9559 *
#>
#> Error standard deviation: 0.9369
#> Sample size: 150
#> Number of estimated parameters: 10.965
#> Number of degrees of freedom: 139.035
#> Approximate combined information criteria:
#> AIC AICc BIC BICc
#> 416.9994 418.9003 450.0110 454.7733
In this case first, the stepwise()
function is used,
which finds the best model in the pool. Then each variable that is not
in the model is added to the model and then removed iteratively. IC,
parameters values and standard errors are all written down for each of
these expanded models. Finally, in a similar manner each variable is
removed from the optimal model and then added back. As a result the pool
of combined models becomes much smaller than it could be in case of the
brute force, but it contains only meaningful models, that are close to
the optimal. The rationale for this is that the marginal contribution of
variables deteriorates with the increase of the number of parameters in
case of the stepwise function, and the IC weights become close to each
other around the optimal model. So, whenever the models are combined,
there is a lot of redundant models with very low weights. By using the
mechanism described above we remove those redundant models.
There are several methods for the lm.combined
class,
including:
predict.greybox()
- returns the point and interval
predictions.
forecast.greybox()
- wrapper around
predict()
The forecast horizon is defined by the length of
the provided sample of newdata
.
plot.lm.combined()
- plots actuals and fitted
values.
plot.predict.greybox()
- which uses
graphmaker()
function from smooth
in order to
produce graphs of actuals and forecasts.
As an example, let’s split the whole sample with Box-Jenkins data
into in-sample and the holdout:
BJInsample <- BJxreg[1:130,];
BJHoldout <- BJxreg[-(1:130),];
ourModel <- lmCombine(BJInsample,bruteforce=FALSE)
A summary and a plot of the model:
summary(ourModel)
#> The AICc combined model
#> Response variable: y
#> Distribution used in the estimation: Normal
#> Coefficients:
#> Estimate Std. Error Importance Lower 2.5% Upper 97.5%
#> (Intercept) 19.3889 0.8562 1.0000 17.6936 21.0843 *
#> xLag4 3.3491 0.2967 1.0000 2.7617 3.9366 *
#> xLag9 1.3338 0.2984 0.9990 0.7430 1.9246 *
#> xLag3 4.7577 0.2788 1.0000 4.2057 5.3098 *
#> xLag10 1.5362 0.2702 1.0000 1.0013 2.0712 *
#> xLag5 2.3213 0.3064 1.0000 1.7146 2.9280 *
#> xLag6 1.6612 0.3091 1.0000 1.0492 2.2732 *
#> xLead9 0.2944 0.1261 0.8910 0.0447 0.5442 *
#> xLag8 1.3690 0.3085 0.9989 0.7582 1.9799 *
#> xLag7 1.3270 0.3094 0.9982 0.7145 1.9396 *
#>
#> Error standard deviation: 0.9554
#> Sample size: 130
#> Number of estimated parameters: 10.887
#> Number of degrees of freedom: 119.113
#> Approximate combined information criteria:
#> AIC AICc BIC BICc
#> 368.1614 370.3528 399.3803 404.7136
plot(ourModel)
![](data:image/png;base64,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)
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)
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)
Importance tells us how important the respective variable is in the
combination. 1 means 100% important, 0 means not important at all.
And the forecast using the holdout sample:
ourForecast <- predict(ourModel,BJHoldout)
plot(ourForecast)
![](data:image/png;base64,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)
These are the main functions implemented in the package for now. If
you want to read more about IC model selection and combinations, I would
recommend (Burnham and Anderson 2004)
textbook.
References
Burnham, Kenneth P, and David R Anderson. 2004.
Model Selection and Multimodel Inference.
Edited by Kenneth P Burnham and David R Anderson. Springer New York.
https://doi.org/10.1007/b97636.