Displaying 20 results from an estimated 182 matches for "autoregressic".
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autoregressice
2004 Jul 23
3
vetor autoregressions and BVARs
I have not been able to find any programs for running vector
autoregressions with R. I am interested in running Bayesian VARs and
also running VARs that run all combinations of variables in the vector.
Is anyone currently developing this?
-Nirav Mehta
2008 Nov 19
2
simulation of autoregressive process
Dear R users,
I would like to simulate, for 20000 replications, an autoregressive process: y(t)=0.8*y(t-1)+e(t) where e(t) is i.i.d.(0,sigma*sigma),
Thank you in advance
____________________________________________________
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2002 Dec 10
1
autoregressive poisson process
Dear R users,
I am trying to find a package that can estimate
an autoregressive model for discrete data. I am
imagining a Poisson or Gamma process in which the
mean (say mu) follows a process such as
mu_t = a + b*x + c*mu_{t-1}
Suppose I have data on the time-series Poisson
outcomes and x and would like to obtain ML estimates
for b and c.
Does anyone know of a package that can do this
2007 Aug 07
1
Functions for autoregressive Regressionmodels (Mix between times series and Regression Models) ?
Hello everybody,
I've a question about "autoregressive Regressionmodels".
Let Y[1],.....,Y[n], be a time series.
Given the model:
Y[t] = phi[1]*Y[t-1] + phi[2]*Y[t-1] + ... + phi[p]*Y[t-p] + x_t^T*beta + u_t,
where x_t=(x[1t],x[2t],....x[mt]) and beta=(beta[1],...,beta[m]) and u_t~(0,1)
I want to estimate the coefficients phi and beta.
Are in R any functions or packages for
2010 Mar 01
2
Simple Linear Autoregressive Model with R Language
Hello -
I need to do simple linear autoregressive model with R software for my
thesis. I looked into all your documentation and I am not able to find
anything too helpful. Can someone help me with the codes?
Thanks
Emil
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2012 Jun 18
0
Obtaining r-squared values from phylogenetic autoregression in ape
Hello,
I am trying to carry out a phylogenetic autoregression to test whether my
data show a phylogenetic signal, but I keep calculating bizzare R-squared
values.
My script is:
> library(ape)
> x <-
2000 Jun 20
1
pacf
Dear list,
according to the documentation of acf{ts}
"the partial correlation coefficient is estimated by fitting
autoregressive models of successively higher orders up to lag.max. "
However, R seems to return the Yule-Walker estimates of the PACF by
default. You can check this using c(1:10) as the series: the YW
estimates are 0.7000000 and -0.1527035 for lags 1 and 2 . If the PACF
2008 Feb 15
1
Conditional Autoregressive (CAR) model simulation
Hi all !
I would like to simulate spatial lattice/areal data with a conditional
autoregressive (CAR) structure, for a given neighbouring matrix and for a
autocorrelation "rho".
Is there any package or function in R to perform it ?
I found the function "CARsimu" in the hdeco library, but this is not what
I'm looking for
Thanks in advance
Dae-Jin
--
2006 Mar 02
1
Autoregressive Model with Independent Variable
Hey, all, I may just be missing something, but I'm trying to construct
a temporal autoregression with an independant variable other than just
what is happened at a previous point in time. So, the model structure
would be something like
y(t)=b0+b1*y(t-1)+b2*y(t-2)...+a*x(t)
I'm even considering a model of
y(t)=b0+b1*y(t-1)+b2*y(t-2)...+a1*x(t)+a2*x(t-1)...
So, my data looks like
2011 Jul 27
0
Conditional Autoregressive Value at Risk (CAViaR)
Hi,
I am trying to replicate Engle and Manganelli's paper Conditional
Autoregressive Value at Risk (CAViaR) by Regression Quantiles. I have the
Matlab code which I cannot get to work as I have never used Matlab before,
does anyone know if there is the same code available to estimate the CAViaR
models in R?
Thanks,
Shane
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2011 Sep 30
0
All subsets vector autoregression with exogenous variables
Hi,
I am trying to fit all subsets for a vector autoregression with exogenous
variables. I have been looking at the 'leaps' function but I not sure how
to get it to work when lags for each variable are included in the model. I
would be really appreciative if someone could provide some links to
examples. Thanks in advance!
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2012 Jul 07
0
regressor & autoregressive error?
Hello,
I am using R for fitting parameters of a time series model.
The model is as below.
Y(t) = mu + a*X(t) + YN(t)
where YN(t) = b*YN(t-1) + innovation
and Z(t) follows N(0,1).
The main obstacle for me is the autoregressive error term, YN(t).
I can't figure out how to estimate the parameters (mu, a, b) with usual
'arima' function in R.
What I have tried is....
1. Do the
2011 May 04
1
Instrumental variable quantile estimation of spatial autoregressive models
Dear all,
I would like to implement a spatial quantile regression using instrumental variable estimation (according to Su and Yang (2007), Instrumental variable quantile estimation of spatial autoregressive models, SMU economics & statistis working paper series, 2007, 05-2007, p.35 ).
I am applying the hedonic pricing method on land transactions in Luxembourg. My original data set contains
2005 Aug 11
1
How to insert a certain model in SVM regarding to fixed kernels
Dear David,
Dear R Users ,
Suppose that we want to regress for example a certain autoregressive model using
SVM. We have our data and also some fixed kernels in libSVM behinde e1071
in front. The question: Where can we insert our certain autoregressive
model ? During creating data frame ? Or perhaps we can make a
relationship between our variables ended to desired autoregressive model ?
2009 Jun 23
0
Vectorize linear autoregression with variable coefficients
This might be obvious to some, but I can't find a neat way to do it:
Say I have two (very long) numerical vectors a & b of the same length
representing variable coefficients of a linear autoregression.
I want to calculate vector x defined by
x[1] <- b[1]
for (n in 2:length(a)) x[n] <- a[n]*x[n-1] + b[n]
Is there a way to do this vectorially, i.e. without using the 'for'
2009 Oct 06
0
Bifurcating Autoregression
Is there any R package that implements a bifurcating autoregression,
aka the BAR(n) model? I've been reading the Huggins and Staudte paper,
"Variance Components Models for Dependent Cell Populations", from the
Journal of the American Statistical Association, 1994.
Shawn Garbett <shawn.p.garbett at vanderbilt.edu>
Vanderbilt Cancer Biology
220 Pierce Ave, PRB 715AA
2011 Jan 12
0
Multivariate autoregressive models with lasso penalization
I wish to estimate sparse causal networks from simulated time series data.
Although there's some discussion about this problem in the literature (at
least a few authors have used lasso and l(1,2) regularization to enforce
sparsity in multivariate autoregressive models, e.g.,
http://user.cs.tu-berlin.de/~nkraemer/papers/grplasso_causality.pdf), I
can't find any R packages with these
2008 Nov 25
0
Vector autoregression, panel data
Hi! I'm a new R user and I have a question about estimating VAR on a panel
data. What I'm trying to do is to explain stock's volume on it's lagged
volume, it's lagged returns and lagged market return's (and vice versa). In
addition I have generated an exogenous variable controlling for stock's
volatility. Some of you may be familiar with this experiment since it
follows
2010 Jun 22
0
How to generate an autoregressive distributed lag model?
Dear All,
I have a short question.
Is there any readily available function that could generate either an ARMAX model or, more generally, an
AutoRegressive Distributed Lag model?
I am looking for a function that is similar to armaSim() function in fArma package.
Thank you.
MP
2010 Aug 17
0
semiparametric fractional autoregressive model
folks,
does anyone know if the SEMIFAR model has been implemented in R? i see that there's a S-FinMetrics function SEMIFAR() that does the job, but I have no access to that software. essentially, this semiparametric fractional autoregressive model introduces a deterministic trend to the FARIMA(p,d,0) model (which, as i understand it, takes care of the random trend and short and long memory).