Likelihood-based generative models are a promising resource to detect out-of-distribution (OOD) inputs which could compromise the robustness or reliability of a machine learning system. However, likelihoods derived from such models have been shown to be problematic for detecting certain types of inputs that significantly differ from training data. In this paper, we pose that this problem is due to the excessive influence that input complexity has in generative models' likelihoods. We report a set of experiments supporting this hypothesis, and use an estimate of input complexity to derive an efficient and parameter-free OOD score, which can be seen as a likelihood-ratio, akin to Bayesian model comparison. We find such score to perform compar...
The question whether inputs are valid for the problem a neural network is trying to solve has sparke...
In many fields of science, generalized likelihood ratio tests are established tools for statistical ...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...
Likelihood-based generative models are a promising resource to detect out-of- distribution (OOD) inp...
International audienceWe present simple methods for out-of-distribution detection using a trained ge...
International audienceNormalizing flows are generative models that show poor performance on out-of-d...
The problem of detecting the Out-of-Distribution (OoD) inputs is of paramount importance for Deep Ne...
Out-of-distribution (OoD) detection is a natural downstream task for deep generative models, due to ...
Increasingly complex generative models are being used across disciplines as they allow for realistic...
Towards Realistic Out-of-Distribution Detection: A Novel Evaluation Framework for Improving Generali...
Towards Realistic Out-of-Distribution Detection: A Novel Evaluation Framework for Improving Generali...
The 16th European Conference on Computer Vision (ECCV 2020), Online Conference, 23-28 August 2020Dee...
The need to avoid confident predictions on unfamiliar data has sparked interest in out-of-distributi...
Existing generative classifiers (e.g., BayesNet and AnDE) make independence assumptions and estimate...
The past decade has seen a remarkable improvement in a variety of machine learning applications than...
The question whether inputs are valid for the problem a neural network is trying to solve has sparke...
In many fields of science, generalized likelihood ratio tests are established tools for statistical ...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...
Likelihood-based generative models are a promising resource to detect out-of- distribution (OOD) inp...
International audienceWe present simple methods for out-of-distribution detection using a trained ge...
International audienceNormalizing flows are generative models that show poor performance on out-of-d...
The problem of detecting the Out-of-Distribution (OoD) inputs is of paramount importance for Deep Ne...
Out-of-distribution (OoD) detection is a natural downstream task for deep generative models, due to ...
Increasingly complex generative models are being used across disciplines as they allow for realistic...
Towards Realistic Out-of-Distribution Detection: A Novel Evaluation Framework for Improving Generali...
Towards Realistic Out-of-Distribution Detection: A Novel Evaluation Framework for Improving Generali...
The 16th European Conference on Computer Vision (ECCV 2020), Online Conference, 23-28 August 2020Dee...
The need to avoid confident predictions on unfamiliar data has sparked interest in out-of-distributi...
Existing generative classifiers (e.g., BayesNet and AnDE) make independence assumptions and estimate...
The past decade has seen a remarkable improvement in a variety of machine learning applications than...
The question whether inputs are valid for the problem a neural network is trying to solve has sparke...
In many fields of science, generalized likelihood ratio tests are established tools for statistical ...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...