A fundamental problem in data analysis is that of fitting a given model to observed data. It is commonly assumed that only the dependent variable values are in error, and the least squares criterion is often used to fit the model. When significant errors occur in all the variables, then an alternative approach which is frequently suggested for this errors in variables problem is to minimize the sum of squared orthogonal distances between each data point and the curve described by the model equation. It has long been recognized that the use of least squares is not always satisfactory, and the l 1 criterion is often superior when estimating the true form of data which contain some very inaccurate observations. In this paper the measure of goo...
Abstract. Bounds on the error of certain penalized least squares data setting, more detailed results...
This paper discusses estimation of regression model with LASSO penalty when the L1-norm is replaced ...
See Appendix.A mass of data may be "fit" (approximated by, inter- and extrapolated by, etc.) a mathe...
Fitting a surface to a given set of measurements is an essential function for engineers and geodesis...
Least‐squares fitting is reviewed, in tutorial form, when both variables contain significant errors....
A solution for the least-squares fit of a straight line to measurements in two dimensions is present...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...
The Method of Least Squares is a procedure to determine the best fit line to data; the proof uses si...
The least absolute deviation or L1 method is a widely known alternative to the classical least squar...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
Abstract:In classical regression analysis, the error of independent variable is usually not taken in...
In classical regression analysis, the error of independent variable is usually not taken into accoun...
. We pose and solve a parameter estimation problem in the presence of bounded data uncertainties. Th...
The problem of fitting a curve or surface to data has many applications. There are also many fitting...
Abstract We consider a range of robust data fitting problems which have attracted interest so far in...
Abstract. Bounds on the error of certain penalized least squares data setting, more detailed results...
This paper discusses estimation of regression model with LASSO penalty when the L1-norm is replaced ...
See Appendix.A mass of data may be "fit" (approximated by, inter- and extrapolated by, etc.) a mathe...
Fitting a surface to a given set of measurements is an essential function for engineers and geodesis...
Least‐squares fitting is reviewed, in tutorial form, when both variables contain significant errors....
A solution for the least-squares fit of a straight line to measurements in two dimensions is present...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...
The Method of Least Squares is a procedure to determine the best fit line to data; the proof uses si...
The least absolute deviation or L1 method is a widely known alternative to the classical least squar...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
Abstract:In classical regression analysis, the error of independent variable is usually not taken in...
In classical regression analysis, the error of independent variable is usually not taken into accoun...
. We pose and solve a parameter estimation problem in the presence of bounded data uncertainties. Th...
The problem of fitting a curve or surface to data has many applications. There are also many fitting...
Abstract We consider a range of robust data fitting problems which have attracted interest so far in...
Abstract. Bounds on the error of certain penalized least squares data setting, more detailed results...
This paper discusses estimation of regression model with LASSO penalty when the L1-norm is replaced ...
See Appendix.A mass of data may be "fit" (approximated by, inter- and extrapolated by, etc.) a mathe...