Bayesian Neural Network
Bayesian neural networks (BNNs) aim to combine the power of deep learning with probabilistic reasoning, enabling models to not only make predictions but also quantify their uncertainty. Current research focuses on improving the efficiency and accuracy of BNN inference, exploring various architectures (like U-Nets and Transformers) and algorithms (including variational inference, MCMC, and ensemble methods) to address challenges like high dimensionality and multimodality in the posterior distribution. This work is significant because reliable uncertainty quantification is crucial for trustworthy AI in safety-critical applications such as medical diagnosis, autonomous driving, and scientific modeling, leading to more robust and explainable AI systems.
Papers
Uncertainty in Graph Contrastive Learning with Bayesian Neural Networks
Alexander Möllers, Alexander Immer, Elvin Isufi, Vincent Fortuin
Data-driven prediction of tool wear using Bayesian-regularized artificial neural networks
Tam T. Truong, Jay Airao, Panagiotis Karras, Faramarz Hojati, Bahman Azarhoushang, Ramin Aghababaei
Practical Layout-Aware Analog/Mixed-Signal Design Automation with Bayesian Neural Networks
Ahmet F. Budak, Keren Zhu, David Z. Pan
Scale-Dropout: Estimating Uncertainty in Deep Neural Networks Using Stochastic Scale
Soyed Tuhin Ahmed, Kamal Danouchi, Michael Hefenbrock, Guillaume Prenat, Lorena Anghel, Mehdi B. Tahoori