Variational 推断 (Inference) for Lévy Process-Driven SDEs via Neural Tilting
Variational Inference for Lévy Process-Driven SDEs via Neural Tilting
作者
Authors
Yaman Kindap | Manfred Opper | Benjamin Dupuis | Umut Simsekli | Tolga Birdal
期刊
Journal
暂无期刊信息
年份
Year
2026
分类
Category
国家
Country
-
📝 摘要
Abstract
Modelling extreme events and heavy-tailed phenomena is central to building reliable predictive systems in domains such as finance, climate science, and safety-critical AI. While Lévy processes provide a natural mathematical framework for capturing jumps and heavy tails, Bayesian inference for Lévy-driven stochastic differential equations (SDEs) remains intractable with existing methods: Monte Carlo approaches are rigorous but lack scalability, whereas neural variational inference methods are efficient but rely on Gaussian assumptions that fail to capture discontinuities. We address this tension by introducing a neural exponential tilting framework for variational inference in Lévy-driven SDEs. Our approach constructs a flexible variational family by exponentially reweighting the Lévy measure using neural networks. This parametrization preserves the jump structure of the underlying process while remaining computationally tractable. To enable efficient inference, we develop a quadratic neural parametrization that yields closed-form normalization of the tilted measure, a conditional Gaussian representation for stable processes that facilitates simulation, and symmetry-aware Monte Carlo estimators for scalable optimization. Empirically, we demonstrate that the method accurately captures jump dynamics and yields reliable posterior inference in regimes where Gaussian-based variational approaches fail, on both synthetic and real-world datasets.
📊 文章统计
Article Statistics
基础数据
Basic Stats
108
浏览
Views
0
下载
Downloads
13
引用
Citations
引用趋势
Citation Trend
阅读国家分布
Country Distribution
阅读机构分布
Institution Distribution
月度浏览趋势
Monthly Views