Short time series are common in environmental and ecological studies. For sample sizes of 10 to 50, I examined the performance of methods for adjusting confidence intervals of the mean and parameters of a linear regression for autocorrelation. Similar analyses are common in econometric studies, and serious concerns have been raised about the adequacy of the common adjustment approaches, especially for estimating the slope of a linear regression when the explanatory variable has a time trend. Use of a bias—corrected estimate of the autocorrelation, either in an adjusted t test or in two—stage approach, outperformed other methods, including maximum likelihood and bootstrap estimators, in terms of confidence interval coverage. The bias correct...
When time-series data are positively autocorrelated, mean adjustment using the overall sample mean c...
Confidence intervals in econometric time series regressions suffer from notorious coveragenproblems....
Background Regression analyses of time series of disease counts on environmental determinants are...
Abstract Nonlinear phenomena are universal in ecology. However, their inference and prediction are g...
Positive autocorrelation can inflate type I error in tests for significance of the linear regression...
1-1. In the analysis of. most time series it is customary to estimate the mean and the trend by fitt...
BACKGROUND: Interrupted time series (ITS) studies are frequently used to evaluate the effects of pop...
In the first part of the study, nine estimators of the first-order autoregressive parameter are revi...
The efficiency of estimation procedures and the validity of testing procedures in simple and multipl...
This article studies confidence intervals for regression parameters in time series settings. An equi...
Interpretation of continuous measurements in microenvironmental studies and exposure assessments can...
The behavior of the t test in small samples for coefficient significance in time-series regressions ...
Using the Prais-Winsten correction and adding a lagged variable provides improved estimates (smaller...
In the classical linear regression model we assume that successive values of the disturbance term ar...
Abstract Background Interrupted time series (ITS) studies are frequently used to evaluate the effect...
When time-series data are positively autocorrelated, mean adjustment using the overall sample mean c...
Confidence intervals in econometric time series regressions suffer from notorious coveragenproblems....
Background Regression analyses of time series of disease counts on environmental determinants are...
Abstract Nonlinear phenomena are universal in ecology. However, their inference and prediction are g...
Positive autocorrelation can inflate type I error in tests for significance of the linear regression...
1-1. In the analysis of. most time series it is customary to estimate the mean and the trend by fitt...
BACKGROUND: Interrupted time series (ITS) studies are frequently used to evaluate the effects of pop...
In the first part of the study, nine estimators of the first-order autoregressive parameter are revi...
The efficiency of estimation procedures and the validity of testing procedures in simple and multipl...
This article studies confidence intervals for regression parameters in time series settings. An equi...
Interpretation of continuous measurements in microenvironmental studies and exposure assessments can...
The behavior of the t test in small samples for coefficient significance in time-series regressions ...
Using the Prais-Winsten correction and adding a lagged variable provides improved estimates (smaller...
In the classical linear regression model we assume that successive values of the disturbance term ar...
Abstract Background Interrupted time series (ITS) studies are frequently used to evaluate the effect...
When time-series data are positively autocorrelated, mean adjustment using the overall sample mean c...
Confidence intervals in econometric time series regressions suffer from notorious coveragenproblems....
Background Regression analyses of time series of disease counts on environmental determinants are...