Agent Tuning & Optimization 相关度: 6/10

Scenario Approach with Post-Design Certification of User-Specified Properties

Algo Carè, Marco C. Campi, Simone Garatti
arXiv: 2602.15568v1 发布: 2026-02-17 更新: 2026-02-17

AI 摘要

提出一种两级框架,在设计后验证用户指定属性,无需额外测试数据。

主要贡献

  • 提出两级框架:baseline appropriateness和post-design appropriateness
  • 提供post-design appropriateness风险的分布无关上限和下限
  • 提出从可用数据集中推断性能指标分布知识的方法

方法论

在scenario approach基础上,引入两级框架进行设计和验证,并提供理论界限。

原文摘要

The scenario approach is an established data-driven design framework that comes equipped with a powerful theory linking design complexity to generalization properties. In this approach, data are simultaneously used both for design and for certifying the design's reliability, without resorting to a separate test dataset. This paper takes a step further by guaranteeing additional properties, useful in post-design usage but not considered during the design phase. To this end, we introduce a two-level framework of appropriateness: baseline appropriateness, which guides the design process, and post-design appropriateness, which serves as a criterion for a posteriori evaluation. We provide distribution-free upper bounds on the risk of failing to meet the post-design appropriateness; these bounds are computable without using any additional test data. Under additional assumptions, lower bounds are also derived. As part of an effort to demonstrate the usefulness of the proposed methodology, the paper presents two practical examples in H2 and pole-placement problems. Moreover, a method is provided to infer comprehensive distributional knowledge of relevant performance indexes from the available dataset.

标签

scenario approach data-driven design post-design certification robust optimization

arXiv 分类

stat.ME cs.LG eess.SY stat.ML