Predicting not only the target but also an accurate measure of uncertainty is important for many machine learning applications, and in particular, safety-critical ones. In this work, we study the calibration of uncertainty prediction for regression tasks which often arise in real-world systems. We show that the existing definition for the calibration of regression uncertainty has severe limitations in distinguishing informative from non-informative uncertainty predictions. We propose a new definition that escapes this caveat and an evaluation method using a simple histogram-based approach. Our method clusters examples with similar uncertainty prediction and compares the prediction with the empirical uncertainty on these examples. We also pr...
Despite recent advances in statistical machine learning that significantly improve performance, the ...
Predicting unknown and unobserved events is a common task in many domains. Mathematically, the uncer...
As neural networks become more popular, the need for accompanying uncertainty estimates increases. T...
The capability of effectively quantifying the uncertainty associated to a given prediction is an imp...
Machine learning and artificial intelligence will be deeply embedded in the intelligent systems huma...
With rapid adoption of deep learning in critical applications, the question of when and how much to ...
This Chapter presents the PASCAL Evaluating Predictive Uncertainty Challenge, introduces the contrib...
Uncertainty quantification for complex deep learning models is increasingly important as these techn...
Abstract: This paper presents a novel method for estimating “total ” predictive uncertainty using ma...
International audienceAs deep learning applications are becoming more and more pervasive in robotics...
Uncertainty quantification may appear daunting for practitioners due to its inherent complexity but ...
Assessing uncertainty is an important step towards ensuring the safety and reliability of machine le...
A method for interpreting uncertainty of predictions provided by machine learning survival models is...
Abstract. Uncertainty of the input data is a common issue in machine learning. In this paper we show...
The probability distribution of a model prediction is presented as a proper basis for evaluating the...
Despite recent advances in statistical machine learning that significantly improve performance, the ...
Predicting unknown and unobserved events is a common task in many domains. Mathematically, the uncer...
As neural networks become more popular, the need for accompanying uncertainty estimates increases. T...
The capability of effectively quantifying the uncertainty associated to a given prediction is an imp...
Machine learning and artificial intelligence will be deeply embedded in the intelligent systems huma...
With rapid adoption of deep learning in critical applications, the question of when and how much to ...
This Chapter presents the PASCAL Evaluating Predictive Uncertainty Challenge, introduces the contrib...
Uncertainty quantification for complex deep learning models is increasingly important as these techn...
Abstract: This paper presents a novel method for estimating “total ” predictive uncertainty using ma...
International audienceAs deep learning applications are becoming more and more pervasive in robotics...
Uncertainty quantification may appear daunting for practitioners due to its inherent complexity but ...
Assessing uncertainty is an important step towards ensuring the safety and reliability of machine le...
A method for interpreting uncertainty of predictions provided by machine learning survival models is...
Abstract. Uncertainty of the input data is a common issue in machine learning. In this paper we show...
The probability distribution of a model prediction is presented as a proper basis for evaluating the...
Despite recent advances in statistical machine learning that significantly improve performance, the ...
Predicting unknown and unobserved events is a common task in many domains. Mathematically, the uncer...
As neural networks become more popular, the need for accompanying uncertainty estimates increases. T...