Distribution Detection
Out-of-distribution (OOD) detection aims to identify data points that differ significantly from a machine learning model's training data, crucial for ensuring reliable and safe model deployment. Current research focuses on developing novel scoring functions and model architectures, including those based on diffusion models, variational autoencoders, and vision-language models, to improve the accuracy and efficiency of OOD detection, often addressing challenges posed by imbalanced datasets and limited access to model parameters. This field is vital for enhancing the trustworthiness of AI systems across diverse applications, from autonomous driving to medical diagnosis, by mitigating the risks associated with making predictions on unseen data. A growing emphasis is placed on developing methods that are both effective and computationally efficient, particularly for resource-constrained environments.
Papers
Data-Driven Observability Analysis for Nonlinear Stochastic Systems
Pierre-François Massiani, Mona Buisson-Fenet, Friedrich Solowjow, Florent Di Meglio, Sebastian Trimpe
A framework for benchmarking class-out-of-distribution detection and its application to ImageNet
Ido Galil, Mohammed Dabbah, Ran El-Yaniv
VRA: Variational Rectified Activation for Out-of-distribution Detection
Mingyu Xu, Zheng Lian, Bin Liu, Jianhua Tao