The problem of prediction is revisited with a view towards going beyond the typical nonparametric setting and reaching a fully model-free environment for predictive inference, i.e., point predictors and predictive intervals. A basic principle of model-free prediction is laid out based on the notion of transforming a given set-up into one that is easier to work with, namely i.i.d. or Gaussian. As an application, the problem of nonparametric regression is addressed in detail; the model-free predictors are worked out, and shown to be applicable under minimal assumptions. Interestingly, model-free prediction in regression is a totally automatic technique that does not necessitate the search for an optimal data transformation before model f...
A unifying framework for inference is developed in predictive regressions where the predictor has un...
We argue that prediction intervals based on predictive likelihood do not correct for curvature with ...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
The Model-Free Prediction Principle expounded upon in this monograph is based on the simple notion o...
With the recent growth in data owing to ubiquitous internet connectivity, practical problems involvi...
I first of all wish to congratulate the author for this inspiring and interesting article. It offers...
Abstract: This paper considers prediction intervals for a future observation in the context of mixed...
This paper introduces a new approach to prediction by bringing together two different nonpara-metric...
The model-free bootstrap (MFB), first introduced in Politis [2013] followed by the monograph of Poli...
The construction of a reliable, practically useful prediction rule for future responses is heavily d...
Having a regression model, we are interested in finding two-sided intervals that are guaranteed to c...
Under a general regression setting, we propose an optimal unconditional prediction procedure for fut...
Probabilistic regression models typically use the Maximum Likelihood Estimation or Cross-Validation ...
<p>We study distribution free, nonparametric prediction bands with a special focus on their finite s...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, Engineering Syste...
A unifying framework for inference is developed in predictive regressions where the predictor has un...
We argue that prediction intervals based on predictive likelihood do not correct for curvature with ...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...
The Model-Free Prediction Principle expounded upon in this monograph is based on the simple notion o...
With the recent growth in data owing to ubiquitous internet connectivity, practical problems involvi...
I first of all wish to congratulate the author for this inspiring and interesting article. It offers...
Abstract: This paper considers prediction intervals for a future observation in the context of mixed...
This paper introduces a new approach to prediction by bringing together two different nonpara-metric...
The model-free bootstrap (MFB), first introduced in Politis [2013] followed by the monograph of Poli...
The construction of a reliable, practically useful prediction rule for future responses is heavily d...
Having a regression model, we are interested in finding two-sided intervals that are guaranteed to c...
Under a general regression setting, we propose an optimal unconditional prediction procedure for fut...
Probabilistic regression models typically use the Maximum Likelihood Estimation or Cross-Validation ...
<p>We study distribution free, nonparametric prediction bands with a special focus on their finite s...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, Engineering Syste...
A unifying framework for inference is developed in predictive regressions where the predictor has un...
We argue that prediction intervals based on predictive likelihood do not correct for curvature with ...
In order to construct prediction intervals without the combersome--and typically unjustifiable--assu...