Robustness studies of black-box models is recognized as a necessary task for numerical models based on structural equations and predictive models learned from data. These studies must assess the model's robustness to possible misspecification of regarding its inputs (e.g., covariate shift). The study of black-box models, through the prism of uncertainty quantification (UQ), is often based on sensitivity analysis involving a probabilistic structure imposed on the inputs, while ML models are solely constructed from observed data. Our work aim at unifying the UQ and ML interpretability approaches, by providing relevant and easy-to-use tools for both paradigms. To provide a generic and understandable framework for robustness studies, we define ...
International audienceRobustness analysis is an emerging field in the domain of uncertainty quantifi...
<p>Uncertainty quantification (UQ) is both an old and new concept. The current novelty lies in the ...
Virtually any performance analysis in stochastic modeling relies on input model assumptions that, to...
Robustness studies of black-box models is recognized as a necessary task for numerical models based ...
We consider sensitivity of a generic stochastic optimization problem to model uncertainty. We take a...
In uncertainty quantification of a numerical simulation model output, the classical approach for qua...
Certified robustness in machine learning has primarily focused on adversarial perturbations of the i...
Input models that drive stochastic simulations are often estimated from real-world samples of data. ...
Many decision problems in science, engineering and economics are affected by uncertain parameters wh...
A method for interpreting uncertainty of predictions provided by machine learning survival models is...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
49 pages, 2 figures; to be presented at the 37th Annual Conference on Neural Information Processing ...
How and when can we depend on machine learning systems to make decisions for human-being? This is pr...
Previous analysis of binary support vector machines (SVMs) has demonstrated a deep connection betwee...
The field of uncertainty quantification (UQ) deals with physical systems described by an input-outpu...
International audienceRobustness analysis is an emerging field in the domain of uncertainty quantifi...
<p>Uncertainty quantification (UQ) is both an old and new concept. The current novelty lies in the ...
Virtually any performance analysis in stochastic modeling relies on input model assumptions that, to...
Robustness studies of black-box models is recognized as a necessary task for numerical models based ...
We consider sensitivity of a generic stochastic optimization problem to model uncertainty. We take a...
In uncertainty quantification of a numerical simulation model output, the classical approach for qua...
Certified robustness in machine learning has primarily focused on adversarial perturbations of the i...
Input models that drive stochastic simulations are often estimated from real-world samples of data. ...
Many decision problems in science, engineering and economics are affected by uncertain parameters wh...
A method for interpreting uncertainty of predictions provided by machine learning survival models is...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
49 pages, 2 figures; to be presented at the 37th Annual Conference on Neural Information Processing ...
How and when can we depend on machine learning systems to make decisions for human-being? This is pr...
Previous analysis of binary support vector machines (SVMs) has demonstrated a deep connection betwee...
The field of uncertainty quantification (UQ) deals with physical systems described by an input-outpu...
International audienceRobustness analysis is an emerging field in the domain of uncertainty quantifi...
<p>Uncertainty quantification (UQ) is both an old and new concept. The current novelty lies in the ...
Virtually any performance analysis in stochastic modeling relies on input model assumptions that, to...