Having a regression model, we are interested in finding two-sided intervals that are guaranteed to contain at least a desired proportion of the conditional distribution of the response variable given a specific combination of predictors. We name such intervals pre-dictive intervals. This work presents a new method to find two-sided predictive intervals for non-parametric least squares regression without the homoscedasticity assumption. Our predictive intervals are built by using tolerance intervals on prediction errors in the query point’s neighborhood. We proposed a predictive interval model test and we also used it as a constraint in our hyper-parameter tuning algorithm. This gives an algorithm that finds the smallest reliable predictive ...
Abstract: This paper considers prediction intervals for a future observation in the context of mixed...
This paper introduces a new non-parametric method for uncertainty quantification through constructio...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
Abstract. In some regression problems, it may be more reasonable to predict intervals rather than pr...
Ground-based aircraft trajectory prediction is a critical issue for air traffic management. A safe a...
International audienceIn some regression problems, it may be more reasonable to predict intervals ra...
Among statistical intervals, confidence intervals and prediction intervals are well-known and common...
A linear regression model for interval data based on the natural interval-arithmetic has recently be...
This paper addresses the problem of constructing reliable interval predictors directly from observed...
Easy to compute one-sided small sample conservative prediction intervals for binomial, Poisson, hype...
A major difficulty in applying a measurement error model is that one is required to have additional ...
In this article we demonstrate that, when evaluating a method for determining prediction intervals, ...
When working with a single random variable, the simplest and most obvious approach when estimating a...
Abstract. By employing regression methods minimizing predictive risk, we are usually looking for pre...
The problem of prediction is revisited with a view towards going beyond the typical nonparametric se...
Abstract: This paper considers prediction intervals for a future observation in the context of mixed...
This paper introduces a new non-parametric method for uncertainty quantification through constructio...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
Abstract. In some regression problems, it may be more reasonable to predict intervals rather than pr...
Ground-based aircraft trajectory prediction is a critical issue for air traffic management. A safe a...
International audienceIn some regression problems, it may be more reasonable to predict intervals ra...
Among statistical intervals, confidence intervals and prediction intervals are well-known and common...
A linear regression model for interval data based on the natural interval-arithmetic has recently be...
This paper addresses the problem of constructing reliable interval predictors directly from observed...
Easy to compute one-sided small sample conservative prediction intervals for binomial, Poisson, hype...
A major difficulty in applying a measurement error model is that one is required to have additional ...
In this article we demonstrate that, when evaluating a method for determining prediction intervals, ...
When working with a single random variable, the simplest and most obvious approach when estimating a...
Abstract. By employing regression methods minimizing predictive risk, we are usually looking for pre...
The problem of prediction is revisited with a view towards going beyond the typical nonparametric se...
Abstract: This paper considers prediction intervals for a future observation in the context of mixed...
This paper introduces a new non-parametric method for uncertainty quantification through constructio...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...