Refers to the property of a random process to have non-constant variance along some continuum. This most commonly presents in regression where the error variance increases as a function of one or more predictors, but also commonly refers to a time series whose variance changes over time.

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9 views

Parametric segmented or piecewise regression with heteroscedastic errors

I am fitting longitudinal data with an increase in variance over time. The standard physiological model is a bi- or tri-linear model with variable breakpoints. The estimated parameters are used to ...
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2answers
55 views

Hypothesis testing a location shift in heteroscedastic and non-normal data

How do I test for a "location shift" in something like the mean or median if the shape of the distribution has changed quite significantly between groups? Often an experimental intervention seems to ...
2
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1answer
47 views

Crises: ANOVA? Or: how to analyse non-normal, non-Homogeneity data with different group sizes?

I'm somewhat new the world of statistics, or at least it has been years since I last used it and basically the only program I know generally how to work with is SPSS. However, for my Master thesis I ...
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0answers
47 views

Hettest Not Appropriate for Robust Cluster

I am using stata, and running a regression with robust standard errors. I want to test the Heteroscedasticity after running the regression with robust standard errors, and to compare this to before ...
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2answers
30 views

Quantifying homogeneity

I am hydrologist and I am looking for a solution for the following problem: Suppose that I have $k$ samples of observations (region) of the same variable (e.g., annual peak flow) at different ...
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3answers
121 views

Why it is natural to expect equality of variances?

When conducting various statistical test why do we expect equality of variances/ homoscedasticity/sphericity etc.?
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1answer
35 views

Do I need heteroscedasticity consistent Standard Errors in LMER when applying Heckman's two stage procedure?

When including an Inverse Mill's ratio to account for selection in a mixed model using LMER in R (following Heckman's [1979] two-stage procedure), do I still need to estimate robust SEs or does the ...
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0answers
33 views

Testing for structural break on included variables under heteroscedasticity

I am doing an analysis on how energy ratings affects the prices in the housing market. My data series ranges from 2003 to 2013, and to account for fluctuations in the sales price over time, I use ...
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2answers
62 views

Homogeneity testing of baseline characteristics in medical trials

I have been reading medical journals and they repeatedly show baseline characteristics of samples from a randomised controlled trial, which they have then tested to ensure no differences between the ...
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0answers
80 views

What method is better to model percentage response with each subject measured two times and heteroscedastic error?

The response was calculated as $\frac{Control-Observation}{Control}*100\%$. Raw values of $Control$ and $Observation$ are not available, I have only calculated values. Each value was measured twice. ...
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1answer
48 views

Dealing with outliers when comparing variances with Bartlett's test

I have four different groups (with unequal sample sizes of 100 to 120) and want to test if the variance differs. For ANOVAs I used the winsorized mean to get a more robust estimate and I am wondering ...
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1answer
60 views

Comparison of p values for Levene mean test and Levene median test?

I am doing Levene's mean test and Levene's median test (Brown-Forsythe). I want to compare the p-values of these two tests to see which is better. I get large p-values for both tests which are 0.562 ...
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2answers
134 views

Alternative to One-way ANOVA unequal variance

I would like to compare the means across three groups of equal sizes (equal sample size is small, 21). The means of each group are normally distributed, but their variances are unequal (tested via ...
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0answers
20 views

Getting a posterior belief from noisy observations

Say I have a dataset $X = \{x_i\} \supset \mathbb{R}^n$ for which I assume that $x_i = y_i + \sigma(y_i)$ for some unobserved variables $\{ y_i \}$. That is, I believe that my data is subject to ...
5
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1answer
204 views

Is bootstrapping standard errors and confidence intervals appropriate in regressions where homoscedasticity assumption is violated?

If in standard OLS regressions two assumptions are violated (normal distribution of errors, homoscedasticity), is bootstrapping standard errors and confidence intervals an appropriate alternative to ...
0
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1answer
91 views

how to test heteroskedasticity of a time series in R?

How can I test heteroskedasticity of a time series in R? I have heard of two tests McLeod.Li.test and bptest (Breusch-Pagan ...
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1answer
71 views

Bootstrapped confidence intervals for the parameters of a linear model applied to multiply imputed data

I would like to construct CIs for $\beta$ in the linear model $Y = X\beta + \epsilon$ I observe $\{X', Y'\}$ which is $\{X,Y\}$ contaminated with values missing at random. $\epsilon$ is not Gaussian ...
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0answers
67 views

TIme series analysis: ARCH-LM statstics and length of a time series

I have four 30-year long time series of daily correlated weather variables. I estimated a VAR model to the series using vars R package. Then, I executed seriality and normality test on VAR residuals, ...
5
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1answer
71 views

Constant variance assumption in regression model

My question is how do we check the constant variance assumption in a regression model?
2
votes
1answer
110 views

Can I justify performing a two-way anova where data is normally distributed but has heterogeneous variances?

I'm an undergraduate psychology student currently finishing up my dissertation, but a few days ago, while going through my SPSS output, I realized my Levene's test is significant, but my data is ...
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1answer
61 views

Finding structural breaks in heteroskedastic time series

I'm currently writing my thesis and I'm a little stumped. I'm trying to identify structural breaks in the movement of reserve currencies. I'm not yet all that versed in the finer details of time ...
0
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1answer
73 views

Estimate how coefficient of variation changes as a function of $x$ without replication

Suppose I have data points of the form (x,y) and I know that CV should be constant across all x values. (i.e. heteroskedastic data). That being said, how can I compute the estimated CV if I don't have ...
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0answers
60 views

What is the MLE if the variance is heteroskedastic

The normal distribution of MLE is start ${x_1,...,x_n}$ random sample from $\sim\mathcal{N}(\mu,\sigma^2)$ This family of distributions has two parameters: $\theta = (\mu, \sigma)$, so we maximize ...
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3answers
105 views

Linear model estimation in the presence of heteroscedasticity

Assuming a sample of random variables where the error terms for each random variable ($y_{i}$) are given by $\epsilon_{1}, \dots, \epsilon_{n} \sim N(0, \sigma^{2})$, a linear model is developed such ...
2
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2answers
159 views

Is it possible to calculate variable confidence intervals, conditional on $\hat{Y}$ to address heteroscedasticity?

Estimating confidence intervals for non-normally distributed residuals can be accomplished using bootstrapping procedures, sandwich estimators or quantile regression. But is there a way to calculate ...
3
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1answer
117 views

QQ plot is consistent with normality when subgroups are non-normal

I have read that for a one way ANOVA, you should check that the model residuals are normally distributed. If the variance of each group is homogeneous then this implies that the residuals with each ...
3
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1answer
138 views

ANOVA:How to detect non-normality with a QQPlot in the presence of non-homogeneous variance

This is a pretty general question but, I often find statistical textbooks claiming that, in order to justify the within groups normality assumption of a one way ANOVA, you can look at a QQ plots of ...
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1answer
115 views

“Constant variance” violation

If we apply linear regression on a data which has a BINARY(0,1) dependant variable, the very important assumption of "constant variance" of the dependant variable across independant variables is ...
5
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2answers
848 views

What does having “constant variance” in a linear regression model mean?

What does having "constant variance" in the error term means. As I see it , we have a data with variable and 1 independent variable. This is one assumption of linear regression. I am wondering what ...
5
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1answer
224 views

Sandwich estimator intuition

Wikipedia and the R sandwich package vignette give good information about the assumptions supporting OLS coefficient standard errors and the mathematical background of the sandwich estimators. I'm ...
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0answers
71 views

Regression model with heteroskedasticity in both variables

I've been learning (lurking) from this site for a while and I finally have a question I haven't seen answered yet. I'm doing a flight test and trying to fit the resulting data to linear line. From a ...
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0answers
48 views

High heteroscedasticity level

My dependent variable - logincome - and one independent variable - age - are continuous. All other explanatory variables are categorical including BA_degree, race, occupation, region, homeownership. ...
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2answers
168 views

Several intraclass correlations (ICC) when modeling heterogeneous variances?

In a nested design (e.g., students in schools, ants in colonies, individuals in a species, leaves in a tree), ICC is defined as the proportion of variance among observations from the same subject ...
5
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1answer
144 views

Conceptual distinction between heteroscedasticity and non-stationarity

I'm having trouble distinguishing between the concepts of scedasticity and stationarity. As I understand them, heteroscedasticity is differing variabilities in sub-populations and non-stationarity is ...
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1answer
413 views

What if results from a Breusch-Pagan test for heteroscedasticity contradicts those of a White's test?

Testing for heteroscedasticity I get these results: Breusch-Pagan / Cook-Weisberg test for heteroskedasticity Ho: Constant variance Variables: fitted values of log_expdu ...
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0answers
109 views

How to run Pesaran Cointegration Bound test and removing heteroskedasticity fron short term model?

At first, excuse my english because i don't speak it very well. I am also new in this place. I hope i can ask this question here. Thanks a lot for what you're doing! I have a question. Now i'm ...
2
votes
1answer
127 views

Chi-square test in finite mixture models

I was trying to figure out whether or not the distribution of a biomarker came from heterogeneous populations. Analyzing the data with normalmixEM in the ...
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0answers
303 views

Question about Hausman-test for endogeneity with two endogenous regressors with potential heteroscedasticity

First question: Is the following example of computing the Hausman-test for endogenity with two endogenous regressors adequate? Second question: Is it true that in case of heteroscedasticity, i.e. ...
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0answers
69 views

Couple of linear regressions with heteroskedasticity and correlated errors

I have two linear models: $$ y_1 = \mu_1 + \beta_1x + \epsilon_1 $$ $$ y_2 = \mu_2 + \beta_2x + \epsilon_2 $$ where $\epsilon_1, \epsilon_2 \sim \text{MVN}(0, \Sigma(x))$, where $\Sigma(x)$ in NOT ...
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2answers
316 views

Testing assumptions of multiple regression

When doing a multiple regression and testing for homoscedasticity some people look at raw observations and others the residuals. Which is correct? Do you use raw data or residuals to test linearity? ...
2
votes
1answer
138 views

Should raw data or residuals be used to check homogeneity of variance?

Unexpectedly for me (!) I've recently learnt that: "We have assumed that the error terms, $\epsilon_{ij}$, of the variates in each sample will be independent, that the variances of the error terms ...
2
votes
0answers
183 views

Wild cluster bootstrap seems really simple. Too simple. Am I missing someting?

I've been dealing with the problem of how to construct confidence intervals on penalized spline estimators in the presence of cluster-wise auto-correlation and heteroskedasticity. My previous thread ...
4
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0answers
294 views

How to correct for heteroskedasticity in fixed effects panel regression with correction for clustered standard error?

I am a student at RSM and I have a question regarding my regression analysis for my thesis as I have encountered issues I do not know how to deal with. I have performance data (dependent variable) of ...
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0answers
26 views

How do I calculate the difference between incidences?

I'm making a study on the necessity of routine omentectomy in ovarian cancer patients. The plan is to first find the incidence of occult metastases of the omentum in ovarian cancer patients, and ...
1
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1answer
149 views

Variances not homogeneous problem in ANOVA mixed between-within subjects, too bad?

I'm conducting a 2x3 mixed between-within subjects ANOVA (group x time). I have 20 participants, 10 for each group, who undergo all the 3 measures over time. Levene's test of equality of variances is ...
2
votes
0answers
438 views

Newey-West t-statistics

I have a time-series which is autocorrelated by construction, and might be heteroscedastic. I have calculated the sample mean of this time-series, and would like to calculate the t-statistic ...
0
votes
0answers
152 views

Homogeneity of variance in ANOVA mixed model?

I'm conducting a 2x3 mixed between-within subjects ANOVA (group x time). I have 20 participants, 10 for each group, who undergo all the 3 measures over time. I have checked with SPSS: variance is ...
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0answers
60 views

Need to analyze: Unequal variances, Factorial Completer Randomized Design

I'm trying to analyze data that violates the assumptions of an ANOVA (homogeneity of variances), thus I think I have to conduct a non-parametric test. My study follows a factorial completely ...
4
votes
1answer
163 views

Is there a better way to create variables with a certain correlation and one of them is heteroskedastic?

My goal is to generate two variable which are correlated and one of them is heteroscedastic with regards to an grouping variable. To create two variables with a desired correlation the common way to ...
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1answer
315 views

Alternative to 2-way ANOVA when variances are unequal

I'm working on a question on 2-way ANOVA where there are 2 treatments and 1 blocking factor. The residual plots suggest unequal variance. What is another parametric or non-parametric alternative ...

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