| A Deterministic Approximation to Neural SDEs | Jun 16, 2020 | Time Series AnalysisUncertainty Quantification | —Unverified | 0 |
| Deterministic Fokker-Planck Transport -- With Applications to Sampling, Variational Inference, Kernel Mean Embeddings & Sequential Monte Carlo | Oct 11, 2024 | Density EstimationVariational Inference | —Unverified | 0 |
| An Introduction to Probabilistic Spiking Neural Networks: Probabilistic Models, Learning Rules, and Applications | Oct 2, 2019 | Variational Inference | —Unverified | 0 |
| Dynamics Learning with Cascaded Variational Inference for Multi-Step Manipulation | Oct 29, 2019 | Variational Inference | —Unverified | 0 |
| Learning Optimal Filters Using Variational Inference | Jun 26, 2024 | Variational Inference | —Unverified | 0 |
| Dependency Grammar Induction with a Neural Variational Transition-based Parser | Nov 14, 2018 | Dependency Grammar InductionVariational Inference | —Unverified | 0 |
| Bayesian Hypernetworks | Oct 13, 2017 | Active LearningAnomaly Detection | —Unverified | 0 |
| Deep Variational Inference Without Pixel-Wise Reconstruction | Nov 16, 2016 | Variational Inference | —Unverified | 0 |
| Bayesian Hierarchical Mixtures of Experts | Oct 19, 2012 | Mixture-of-ExpertsVariational Inference | —Unverified | 0 |
| An Instability in Variational Inference for Topic Models | Feb 2, 2018 | ArticlesTopic Models | —Unverified | 0 |
| Learning proposals for sequential importance samplers using reinforced variational inference | Mar 16, 2019 | reinforcement-learningReinforcement Learning | —Unverified | 0 |
| An Information Theoretic Approach to Distributed Representation Learning | Sep 25, 2019 | Representation LearningVariational Inference | —Unverified | 0 |
| Bayesian Exploration Networks | Aug 24, 2023 | Decision MakingDecision Making Under Uncertainty | —Unverified | 0 |
| A Dynamic Edge Exchangeable Model for Sparse Temporal Networks | Oct 11, 2017 | Link PredictionVariational Inference | —Unverified | 0 |
| Deep Transformed Gaussian Processes | Oct 27, 2023 | Gaussian ProcessesVariational Inference | —Unverified | 0 |
| Bayesian Experimental Design of Magnetic Resonance Imaging Sequences | Dec 1, 2008 | Bayesian InferenceExperimental Design | —Unverified | 0 |
| Learning noisy-OR Bayesian Networks with Max-Product Belief Propagation | Jan 31, 2023 | Variational Inference | —Unverified | 0 |
| Bayesian Estimation and Tuning-Free Rank Detection for Probability Mass Function Tensors | Oct 8, 2024 | Computational EfficiencyMovie Recommendation | —Unverified | 0 |
| Deep State Space Models for Unconditional Word Generation | Jun 12, 2018 | State Space ModelsText Generation | —Unverified | 0 |
| Bayesian Domain Invariant Learning via Posterior Generalization of Parameter Distributions | Oct 25, 2023 | Domain GeneralizationVariational Inference | —Unverified | 0 |
| An information-theoretic analysis of deep latent-variable models | Jan 1, 2018 | Variational Inference | —Unverified | 0 |
| Learning Robot Skills with Temporal Variational Inference | Jun 29, 2020 | Variational Inference | —Unverified | 0 |
| Deep Reinforcement Learning with Weighted Q-Learning | Mar 20, 2020 | Deep Reinforcement LearningGaussian Processes | —Unverified | 0 |
| Learning Invariances using the Marginal Likelihood | Aug 16, 2018 | Data AugmentationGaussian Processes | —Unverified | 0 |
| Deep Quantization: Encoding Convolutional Activations with Deep Generative Model | Nov 29, 2016 | Action RecognitionFine-Grained Image Classification | —Unverified | 0 |