The history of the seemingly simple problem of straight line fitting in the presence of both $x$ and $y$ errors has been fraught with misadventure, with statistically ad hoc and poorly tested methods abounding in the literature. The problem stems from the emergence of latent variables describing the "true" values of the independent variables, the priors on which have a significant impact on the regression result. By analytic calculation of maximum a posteriori values and biases, and comprehensive numerical mock tests, we assess the quality of possible priors. In the presence of intrinsic scatter, the only prior that we find to give reliably unbiased results in general is a mixture of one or more Gaussians with means and variances determined...
We present the marginal unbiased score expansion (MUSE) method, an algorithm for generic high-dimens...
Linear regression is common in astronomical analyses. I discuss a Bayesian hierarchical modelling of...
Least‐squares fitting is reviewed, in tutorial form, when both variables contain significant errors....
A Two-Stage approach is described that literally "straighten outs" any potentially nonlinear relatio...
Monte Carlo (MC) algorithms are commonly employed to explore high-dimensional parameter spaces const...
The fitting of a straight line to bivariate data (x,y) is a common procedure. Standard linear regres...
The fitting of a straight line to bivariate data (x,y) is a common procedure. Standard linear regres...
The fitting of a straight line to bivariate data (x,y) is a common procedure. Standard linear regres...
The fitting of a straight line to bivariate data (x,y) is a common procedure. Standard linear regres...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
This expository note discusses the problem of fitting a straight line when both variables are subjec...
Many approaches to estimation of panel models are based on an average or integ-rated likelihood that...
Linear regression is common in astronomical analyses. I discuss a Bayesian hierarchical modelling of...
Methodology for regression beyond the mean has been a goal of researchers for many years. This discu...
Factor models have been widely used to summarize the variability of high-dimensional data through a ...
We present the marginal unbiased score expansion (MUSE) method, an algorithm for generic high-dimens...
Linear regression is common in astronomical analyses. I discuss a Bayesian hierarchical modelling of...
Least‐squares fitting is reviewed, in tutorial form, when both variables contain significant errors....
A Two-Stage approach is described that literally "straighten outs" any potentially nonlinear relatio...
Monte Carlo (MC) algorithms are commonly employed to explore high-dimensional parameter spaces const...
The fitting of a straight line to bivariate data (x,y) is a common procedure. Standard linear regres...
The fitting of a straight line to bivariate data (x,y) is a common procedure. Standard linear regres...
The fitting of a straight line to bivariate data (x,y) is a common procedure. Standard linear regres...
The fitting of a straight line to bivariate data (x,y) is a common procedure. Standard linear regres...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
This expository note discusses the problem of fitting a straight line when both variables are subjec...
Many approaches to estimation of panel models are based on an average or integ-rated likelihood that...
Linear regression is common in astronomical analyses. I discuss a Bayesian hierarchical modelling of...
Methodology for regression beyond the mean has been a goal of researchers for many years. This discu...
Factor models have been widely used to summarize the variability of high-dimensional data through a ...
We present the marginal unbiased score expansion (MUSE) method, an algorithm for generic high-dimens...
Linear regression is common in astronomical analyses. I discuss a Bayesian hierarchical modelling of...
Least‐squares fitting is reviewed, in tutorial form, when both variables contain significant errors....