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.
翻译:藤蔓copula提供了灵活的多变量依赖建模方法,已在机器学习领域得到广泛应用,但结构学习仍是关键挑战。Dissmann贪婪算法等早期启发式方法仍被视为黄金标准,但往往并非最优。我们提出了改进结构选择的随机搜索算法,以及基于模型置信集的统计框架,该框架为选择概率提供了理论保证,并为集成学习奠定了坚实基础。在多个真实数据集上的实证结果表明,我们的方法始终优于最先进的技术方案。