input distribution
A Distribution-to-Distribution Neural Probabilistic Forecasting Framework for Dynamical Systems
Yang, Tianlin, Du, Hailiang, Aslett, Louis
Probabilistic forecasting provides a principled framework for uncertainty quantification in dynamical systems by representing predictions as probability distributions rather than deterministic trajectories. However, existing forecasting approaches, whether physics-based or neural-network-based, remain fundamentally trajectory-oriented: predictive distributions are usually accessed through ensembles or sampling, rather than evolved directly as dynamical objects. A distribution-to-distribution (D2D) neural probabilistic forecasting framework is developed to operate directly on predictive distributions. The framework introduces a distributional encoding and decoding structure around a replaceable neural forecasting module, using kernel mean embeddings to represent input distributions and mixture density networks to parameterise output predictive distributions. This design enables recursive propagation of predictive uncertainty within a unified end-to-end neural architecture, with model training and evaluation carried out directly in terms of probabilistic forecast skill. The framework is demonstrated on the Lorenz63 chaotic dynamical system. Results show that the D2D model captures nontrivial distributional evolution under nonlinear dynamics, produces skillful probabilistic forecasts without explicit ensemble simulation, and remains competitive with, and in some cases outperforms, a simplified perfect model benchmark. These findings point to a new paradigm for probabilistic forecasting, in which predictive distributions are learned and evolved directly rather than reconstructed indirectly through ensemble-based uncertainty propagation.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Asia > China > Shanghai > Shanghai (0.04)
Parallel Streaming Wasserstein Barycenters
Efficiently aggregating data from different sources is a challenging problem, particularly when samples from each source are distributed differently. These differences can be inherent to the inference task or present for other reasons: sensors in a sensor network may be placed far apart, affecting their individual measurements. Conversely, it is computationally advantageous to split Bayesian inference tasks across subsets of data, but data need not be identically distributed across subsets. One principled way to fuse probability distributions is via the lens of optimal transport: the Wasserstein barycenter is a single distribution that summarizes a collection of input measures while respecting their geometry. However, computing the barycenter scales poorly and requires discretization of all input distributions and the barycenter itself.
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- North America > Canada (0.04)
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- North America > United States > Illinois > Cook County > Chicago (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
- Asia > Middle East > Jordan (0.04)
- Asia > Afghanistan > Parwan Province > Charikar (0.04)
- North America > United States > Michigan (0.04)
- North America > Canada > Quebec > Montreal (0.04)
- Europe > United Kingdom > England > Oxfordshire > Oxford (0.04)
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- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Uncertainty > Bayesian Inference (0.93)
- Information Technology > Artificial Intelligence > Machine Learning > Learning Graphical Models > Directed Networks > Bayesian Learning (0.68)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (0.68)
- Asia > South Korea > Seoul > Seoul (0.04)
- Asia > Middle East > Jordan (0.04)
- Asia > Myanmar > Tanintharyi Region > Dawei (0.04)
- Asia > China > Hong Kong (0.04)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- Asia > South Korea > Daejeon > Daejeon (0.04)