Focusing on a single sample obtained randomly with replacement from a single population, this article examines the regression of population on sample propor-tions and develops an unbiased estimator of the square of the correlation between them. This estimator turns out to be the regression coefficient. Use of the squared-correlation estimator as a shrinkage coefficient applied to sample proportions in a Bayesian context results in credibility intervals that are narrower, sometimes considerably narrower, than conventional confidence intervals. On illustrative data involving 285 respondents who selected one of two optional responses, the 95 % credibility interval was 33 % narrower than the corresponding conventional confidence interval, while...
AbstractBiased regression is an alternative to ordinary least squares (OLS) regression, especially w...
Parameter shrinkage is known to reduce fitting and prediction errors in linear models. When the vari...
Point scoring, widely used in criminology and other social sciences, is a simple way of predicting a...
Missing effect-size estimates pose a particularly difficult problem in meta-analysis. Rather than di...
Shrinkage of empirical Bayes estimates (EBEs) of posterior individual parameters in mixed-effects mo...
Missing effect-size estimates pose a particularly difficult problem in meta-analysis. Rather than di...
In this study we examine the regression-based ratio-correlation method and suggest some new tools fo...
International audienceBiased regression is an alternative to ordinary least squares (OLS) regression...
(A) Two example populations with McGurk susceptibility of 45% (Population A, orange) and 55% (Popula...
Empirical Bayes (EB) estimates of the random effects in multilevel models represent how individuals ...
The performance of various shrinkage formulas for estimating the population squared multiple correla...
Statistical analysis of mobility tables has long played a pivotal role in com-parative stratificatio...
The importance of defining confidence intervals for sample statistics that are used to estimate char...
A wide range of statistical problems involve estimation of means or conditional means of multidimens...
By releasing the unbiasedness condition, we often obtain more accurate estimators due to the bias-va...
AbstractBiased regression is an alternative to ordinary least squares (OLS) regression, especially w...
Parameter shrinkage is known to reduce fitting and prediction errors in linear models. When the vari...
Point scoring, widely used in criminology and other social sciences, is a simple way of predicting a...
Missing effect-size estimates pose a particularly difficult problem in meta-analysis. Rather than di...
Shrinkage of empirical Bayes estimates (EBEs) of posterior individual parameters in mixed-effects mo...
Missing effect-size estimates pose a particularly difficult problem in meta-analysis. Rather than di...
In this study we examine the regression-based ratio-correlation method and suggest some new tools fo...
International audienceBiased regression is an alternative to ordinary least squares (OLS) regression...
(A) Two example populations with McGurk susceptibility of 45% (Population A, orange) and 55% (Popula...
Empirical Bayes (EB) estimates of the random effects in multilevel models represent how individuals ...
The performance of various shrinkage formulas for estimating the population squared multiple correla...
Statistical analysis of mobility tables has long played a pivotal role in com-parative stratificatio...
The importance of defining confidence intervals for sample statistics that are used to estimate char...
A wide range of statistical problems involve estimation of means or conditional means of multidimens...
By releasing the unbiasedness condition, we often obtain more accurate estimators due to the bias-va...
AbstractBiased regression is an alternative to ordinary least squares (OLS) regression, especially w...
Parameter shrinkage is known to reduce fitting and prediction errors in linear models. When the vari...
Point scoring, widely used in criminology and other social sciences, is a simple way of predicting a...