We present Bayesian Spillover Graphs (BSG), a novel method for learning temporal relationships, identifying critical nodes, and quantifying uncertainty for multi-horizon spillover effects in a dynamic system. BSG leverages both an interpretable framework via forecast error variance decompositions (FEVD) and comprehensive uncertainty quantification via Bayesian time series models to contextualize temporal relationships in terms of systemic risk and prediction variability. Forecast horizon hyperparameter $h$ allows for learning both short-term and equilibrium state network behaviors. Experiments for identifying source and sink nodes under various graph and error specifications show significant performance gains against state-of-the-art Bayesian Networks and deep-learning baselines. Applications to real-world systems also showcase BSG as an exploratory analysis tool for uncovering indirect spillovers and quantifying systemic risk.
翻译:我们提出贝叶西亚斯皮略弗图(BSG),这是学习时际关系、确定关键节点和量化动态系统中多光子外溢效应不确定性的一种新颖方法,BSG通过预测误差差异分解(FEVD)和通过巴伊西亚时间序列模型全面量化不确定性,利用可解释的框架,从系统性风险和预测变异性的角度将时际关系背景化。预测地平线超光速美元可以学习短期和均衡状态网络行为。根据各种图表和误差规格确定源和汇节点的实验显示,与最先进的巴伊西亚网络和深层学习基线相比,业绩显著提高。对现实世界系统的应用还展示了BSG,作为发现间接外溢效应和量化系统风险的探索分析工具。