similar to: Testing autocorrelation & heteroskedasticity of residuals in ts

Displaying 20 results from an estimated 1000 matches similar to: "Testing autocorrelation & heteroskedasticity of residuals in ts"

2012 Sep 18
1
Contradictory results between different heteroskedasticity tests
Hi all, I'm getting contradictory results from bptest and ncvTest on a model calculated by GLS as: olslm = lm(log(rr)~log(aloi)*reg*inv, data) varlm = lm(I(residuals(olslm)^2)~log(aloi)*reg*inv, data) glslm = lm(log(rr)~log(aloi)*reg*inv, data, weights=1/fitted(varlm)) Testing both olslm and glslm with both ncvTest and bptest gives: > ncvTest(olslm) Non-constant Variance Score Test
2009 Sep 18
1
some irritation with heteroskedasticity testing
Dear all, Trying to test for heteroskedasticity I tried several test from the car package respectively lmtest. Now that they produce rather different results i am somewhat clueless how to deal with it. Here is what I did: 1. I plotted fitted.values vs residuals and somewhat intuitively believe, it isn't really increasing... 2. further I ran the following tests bptest (studentized
2011 Jan 20
2
Regression Testing
I'm new to R and some what new to the world of stats. I got frustrated with excel and found R. Enough of that already. I'm trying to test and correct for Heteroskedasticity I have data in a csv file that I load and store in a dataframe. > ds <- read.csv("book2.csv") > df <- data.frame(ds) I then preform a OLS regression: > lmfit <- lm(df$y~df$x) To
2005 Jun 04
1
the test result is quite different,why?
data:http://fmwww.bc.edu/ec-p/data/wooldridge/CRIME4.dta > a$call lm(formula = clcrmrte ~ factor(year) + clprbarr + clprbcon + clprbpri + clavgsen + clpolpc, data = cri) > bptest(a,st=F) Breusch-Pagan test data: a BP = 34.4936, df = 10, p-value = 0.0001523 > bptest(a,st=T) studentized Breusch-Pagan test data: a BP = 10.9297, df = 10, p-value = 0.363 >
2010 Sep 24
3
bptest
Hi I'm very new to R but have plenty of experience with statistics and other packages like SPSS, SAS etc. I have a dataset of around 20 columns and 200 rows. I'm trying to fit a very simple linear model between two variables. Having done so, I want to test the model for heteroscedasticity using the Breusch-Pagan test. Apparently this is easy in R by simply doing bptest(modelCH,
2009 Oct 16
1
Breusch-pagan and white test - check homoscedasticity
Hi r-programmers, I performe Breusch-Pagan tests (bptest in package lmtest) to check the homoscedasticity of the residuals from a linear model and I carry out carry out White's test via bptest (formula, ~ x * z + I(x^2) + I(z^2)) include all regressors and the squares/cross-products in the auxiliary regression. But what can I do if I want find coefficient and p-values of variables x, z, x*z,
2010 Jul 11
1
Durban Watson statistics
I would like to do the Durban-Watson test on a time series of log returns. 2 questions: 1) If I am just trying to find out if there is serial correlation, what do I do for the residuals? there is no model, so do I just use the log returns (time series) itself? 2) what is the code in R to accomplish this? Regards [[alternative HTML version deleted]]
2012 Oct 13
2
White test
Hello, Is there a way to perform a White test (testing heteroscedasticity) under R? Best regards, Afrae Hassouni
2016 Apr 04
4
Test for Homoscedesticity in R Without BP Test
Respected Sir, I am doing a project on multiple linear model fitting and in that project I have to test Homoscedesticity of errors I have google for the same and found bptest for the same but in R version 3.2.4 bp test is not available. So please suggest me a test on homoscedesticity ASAP as we have to submit our report on 7-04-2016. P.S. : I have plotted residuals against fitted values and it is
2010 Dec 27
0
Heteroskedasticity and autocorrelation of residuals
Hello everyone, I'm working on a current linear model Y = a0 + a1* X1 + ... + a7*X7 + residuals. And I know that this model presents both heteroskedasticity (tried Breusch-Pagan test and White test) and residuals autocorrelation (using Durbin Watson test). Ultimately, this model being meant to be used for predictions, I would like to be able to remove this heteroskedasticity and residuals
2006 Sep 29
6
List-manipulation
Hi, Sorry for the question, I know it should be basic knowledge but I'm struggling for two hours now. How do I select only the first entry of each list member and ignore the rest? So for > $"121_at" > -113691170 > $"1255_g_at" > 42231151 > $"1316_at" > 35472685 35472588 > $"1320_at" > -88003869
2016 Apr 04
1
Test for Homoscedesticity in R Without BP Test
On Mon, 4 Apr 2016, varin sacha via R-help wrote: > Hi Deepak, > > In econometrics there is another test very often used : the white test. > The white test is based on the comparison of the estimated variances of > residuals when the model is estimated by OLS under the assumption of > homoscedasticity and when the model is estimated by OLS under the > assumption of
2004 Jan 13
3
How can I test if a not independently and not identically distributed time series residuals' are uncorrelated ?
I'm analizing the Argentina stock market (merv) I download the data from yahoo library(tseries) Argentina <- get.hist.quote(instrument="^MERV","1996-10-08","2003-11-03", quote="Close") merv <- na.remove(log(Argentina)) I made the Augmented Dickey-Fuller test to analyse if merv have unit root: adf.test(merv,k=13) Dickey-Fuller = -1.4645,
2008 Nov 06
2
How to return individual equation from {aidsEst} in package [micEcon]?
Hi, R core team I am using the function {aidsEst} in package [micEcon] to do an AIDS model now. So far, everything is good. But I want to test the auto correlation and heteroskedasticity of the individual equation from AIDS demand system. How can I return the individual equation? PS: serial correlation test is {bgtest} in package [lmtest] and heteroskedasticity is {bptest} in package
2010 Dec 22
1
tests on polr object
Using ordered probit model, I get errors from dwt and bptest. dwt: Error in durbinWatsonTest.default(...) : requires vector of residuals bptest: Error in storage.mode(y) <- "double" : invalid to change the storage mode of a factor I imagine I have to restate as an individual probit model for each category, but is there an easier way? thanks, bp [[alternative HTML version
2016 Apr 04
0
Test for Homoscedesticity in R Without BP Test
Hi Deepak, In econometrics there is another test very often used : the white test. The white test is based on the comparison of the estimated variances of residuals when the model is estimated by OLS under the assumption of homoscedasticity and when the model is estimated by OLS under the assumption of heteroscedastic. The White test with R install.packages("bstats") library(bstats)
2007 May 30
1
white test to check homoscedasticity of the residuals
Hi R-programmers, I can't find find the White test to check the homoscedasticity of the residuals from a linear model. Could you please help me with this? Thank you ! BC [[alternative HTML version deleted]]
2009 Jun 26
1
Heteroskedasticity and Autocorrelation in SemiPar package
Hi all, Does anyone know how to report heteroskedasticity and autocorrelation-consistent standard errors when using the "spm" command in SemiPar package? Suppose the original command is sp1<-spm(y~x1+x2+f(x3), random=~1,group=id) Any suggestion would be greatly appreciated. Thanks, Susan [[alternative HTML version deleted]]
2011 Jun 08
1
Autocorrelation in R
Hi, I am trying to learn time series, and I am attending a colleague's course on Econometrics. However, he uses e-views, and I use R. I am trying to reproduce his examples in R, but I am having problems specifying a AR(1) model. Would anyone help me with my code? Thanks in advance! Reproducible code follows: download.file("https://sites.google.com/a/proxima.adm.br/main/ex_32.csv
2012 May 25
1
Problem with Autocorrelation and GLS Regression
Hi, I have a problem with a regression I try to run. I did an estimation of the market model with daily data. You can see to output below: /> summary(regression_resn) Time series regression with "ts" data: Start = -150, End = -26 Call: dynlm(formula = ror_resn ~ ror_spi_resn) Residuals: Min 1Q Median 3Q Max -0.0255690 -0.0030378 0.0002787