# How to implement ARX(AutoRegressive with Exogenous) model for time series data using wavelet transform in R? [closed]

There are time series data on which I want to build a ARX model.The data is like:

Time             Volume
00:00hr          4632131
01:00hr          4564653
02:00hr          6313986
.......          .......
.......          .......
23:00hr          7986456


Can anyone help me in solving the above problem. The exogenous input for the above time series are:

-644691181
-121187080
353422690
417492115
-504192375
420646272
-47480551
260350503
2151074145
1251550732
788874753
540183268
396739715
948170766
-1433091907
-148444555
-840182654
-893652578
-1738734435
-1431476210
24974246
93873803
-324033231
479813749

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## closed as not a real question by agstudy, talonmies, Druid, X.L.Ant, Aviram SegalFeb 28 '13 at 8:26

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

What have you tried? Are you aware of Task Views? cran.r-project.org/web/views/TimeSeries.html – Roman Luštrik Feb 28 '13 at 5:46
I imagine, that as the model suggests , you need to supply also the exogenous inputs. Here you give just the time series. – agstudy Feb 28 '13 at 6:19
@agstudy here I have given the exogenous input which have generated after applying the Discrete Wavelet Transform, hope I am clear now – Samraan Feb 28 '13 at 7:17

I use fastVAR package. I am not a time series proficient, so I can't be sure from the rsult.

exos <- c(-644691181, -121187080, 353422690, 417492115, -504192375, 420646272,
-47480551, 260350503, 2151074145, 1251550732, 788874753, 540183268,
396739715, 948170766, -1433091907, -148444555, -840182654, -893652578,
-1738734435, -1431476210, 24974246, 93873803, -324033231, 479813749
)

dat <- sample(4632131:100000,24 )
library(fastVAR)
fastVARX(matrix(dat),matrix(exos),3,2,getdiag=FALSE)
Call:
lm(formula = varxz$y.p ~ varxz$Z)

Coefficients:
(Intercept)   varxz$Z.l1 varxz$Z.l2   varxz$Z.l3 varxz$Z.l1   varxz\$Z.l2
4.642e+06   -2.182e-01   -2.607e-01   -4.587e-01    2.963e-04   -3.743e-04

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