There are things we know, things we know we dont know, and then there are things we dont know we dont know. In this paper we address the latter two issues in a Bayesian framework, introducing the notion of doubt to quantify the degree of (dis)belief in a model given observational data in the absence of explicit alternative models. We demonstrate how a properly calibrated doubt can lead to model discovery when the true model is unknown
Both uncertainty estimation and interpretability are important factors for trustworthy machine learn...
Quitting Certainties is an extremely ambitious treatise on Bayesian formal epistemology. The centrep...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
The process of generating a new hypothesis often begins with the recognition that all of the hypothe...
ABSTRACT: We propose a criterion allowing to detect the potential discrepancy between subjective pri...
Gelman and Shalizi (2012) criticize what they call the usual story in Bayesian statistics: that the ...
Models are the venue for much of the work of the economics profession. We use them to express, compa...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Bayesian epistemology postulates a probabilistic analysis of many sorts of ordinary and scientific r...
In this paper a reasoning process is viewed as a process of constructing a partial model of the worl...
This paper advocates the use of nonpurely probabilistic approaches to higher-order uncertainty. One ...
This book provides a multi-level introduction to Bayesian reasoning (as opposed to "conventional sta...
Bayesian networks and other graphical probabilistic models became a popular framework for reasoning ...
Knowing that something is unknown is an important part of human cognition. While Bayesian models of ...
Abstract: In this paper we develop Bayesian procedures for vague data. The data are assumed to be va...
Both uncertainty estimation and interpretability are important factors for trustworthy machine learn...
Quitting Certainties is an extremely ambitious treatise on Bayesian formal epistemology. The centrep...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
The process of generating a new hypothesis often begins with the recognition that all of the hypothe...
ABSTRACT: We propose a criterion allowing to detect the potential discrepancy between subjective pri...
Gelman and Shalizi (2012) criticize what they call the usual story in Bayesian statistics: that the ...
Models are the venue for much of the work of the economics profession. We use them to express, compa...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Bayesian epistemology postulates a probabilistic analysis of many sorts of ordinary and scientific r...
In this paper a reasoning process is viewed as a process of constructing a partial model of the worl...
This paper advocates the use of nonpurely probabilistic approaches to higher-order uncertainty. One ...
This book provides a multi-level introduction to Bayesian reasoning (as opposed to "conventional sta...
Bayesian networks and other graphical probabilistic models became a popular framework for reasoning ...
Knowing that something is unknown is an important part of human cognition. While Bayesian models of ...
Abstract: In this paper we develop Bayesian procedures for vague data. The data are assumed to be va...
Both uncertainty estimation and interpretability are important factors for trustworthy machine learn...
Quitting Certainties is an extremely ambitious treatise on Bayesian formal epistemology. The centrep...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...