Throwing Vines at the Wall: Structure Learning via Random Search
By: Thibault Vatter, Thomas Nagler
Potential Business Impact:
Finds better patterns in data for computers.
Vine copulas offer flexible multivariate dependence modeling and have become widely used in machine learning, yet structure learning remains a key challenge. Early heuristics like the greedy algorithm of Dissmann are still considered the gold standard, but often suboptimal. We propose random search algorithms that improve structure selection and a statistical framework based on model confidence sets, which provides theoretical guarantees on selection probabilities and a powerful foundation for ensembling. Empirical results on several real-world data sets show that our methods consistently outperform state-of-the-art approaches.
Similar Papers
Trunc-Opt vine building algorithms
Methodology
Makes complex math models work better and faster.
Vine Copulas as Differentiable Computational Graphs
Machine Learning (CS)
Makes AI better at predicting and understanding data.
Time-varying Vine Copula model based on R-Vine structure and its application in financial risk research
Applications
Shows how money moves between countries better.