AbstractIn this paper, a revisited interval approach for linear regression is proposed. In this context, according to the Midpoint–Radius (MR) representation, the uncertainty attached to the set-valued model can be decoupled from its trend. The estimated interval model is built from interval input–output data with the objective of covering all available data. The constrained optimization problem is addressed using a linear programming approach in which a new criterion is proposed for representing the global uncertainty of the interval model. The potential of the proposed method is illustrated by simulation examples
In order to solve a linear programme, the model coefficients must be fixed at specific values, which...
This work is focused on estimating interval data by real functions and interval functions. It presen...
Most of statistics and AI draw insights through modelling discord or variance between sources (i.e.,...
International audienceIn this paper, a revisited interval approach for linear regression is proposed...
A linear regression model for interval data based on the natural interval-arithmetic has recently be...
This paper introduces an approach to fitting a constrained linear regression model to interval-value...
Extensions of previous linear regression models for interval data are presented. A more flexible sim...
A new method of regression analysis for interval-valued data is proposed. The relationship between a...
We consider interval-valued data that frequently appear with advanced technologies in cur-rent data ...
Some regression models for analyzing relationships between random intervals (i.e., random variables ...
We consider linear regression models where both input data (the values of independent variables) and...
We present a methodology through exemplification to perform parameter estimation subject to possible...
In this paper, we present a new approach for evaluating the effects of data imprecision on regressio...
summary:In this paper, we extend the traditional linear regression methods to the (numerical input)-...
International audienceThis paper introduces a new type of statistical model: the interval-valued lin...
In order to solve a linear programme, the model coefficients must be fixed at specific values, which...
This work is focused on estimating interval data by real functions and interval functions. It presen...
Most of statistics and AI draw insights through modelling discord or variance between sources (i.e.,...
International audienceIn this paper, a revisited interval approach for linear regression is proposed...
A linear regression model for interval data based on the natural interval-arithmetic has recently be...
This paper introduces an approach to fitting a constrained linear regression model to interval-value...
Extensions of previous linear regression models for interval data are presented. A more flexible sim...
A new method of regression analysis for interval-valued data is proposed. The relationship between a...
We consider interval-valued data that frequently appear with advanced technologies in cur-rent data ...
Some regression models for analyzing relationships between random intervals (i.e., random variables ...
We consider linear regression models where both input data (the values of independent variables) and...
We present a methodology through exemplification to perform parameter estimation subject to possible...
In this paper, we present a new approach for evaluating the effects of data imprecision on regressio...
summary:In this paper, we extend the traditional linear regression methods to the (numerical input)-...
International audienceThis paper introduces a new type of statistical model: the interval-valued lin...
In order to solve a linear programme, the model coefficients must be fixed at specific values, which...
This work is focused on estimating interval data by real functions and interval functions. It presen...
Most of statistics and AI draw insights through modelling discord or variance between sources (i.e.,...