Scenario theory for multi-criteria data-driven decision making

arXiv stat.ML / 4/2/2026

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Key Points

  • 本論文は、不確実性下で複数の目的(複数基準)を同時に満たすように解を設計するための「マルチクライテリアのシナリオ理論」を提案しています。
  • 既存研究が主に「単一の適切性基準」かつ「1つのデータセット」に基づく頑健性評価に限られていた点を、多基準・各基準ごとの複数データセットを扱える一般化で解消しています。
  • 各基準違反に紐づくリスクを“集合的に”扱うことで、標準結果を単純適用した場合よりも精度の高い頑健性証明(ロバストネス・サーティフィケート)を得られると述べています。
  • この枠組みにより、全基準を同時に満たす頑健性レベルをよりシャープに定量化でき、複数基準のデータ駆動意思決定に対して、原理的で拡張性のある理論的手法を提供します。

Abstract

The scenario approach provides a powerful data-driven framework for designing solutions under uncertainty with rigorous probabilistic robustness guarantees. Existing theory, however, primarily addresses assessing robustness with respect to a single appropriateness criterion for the solution based on a dataset, whereas many practical applications - including multi-agent decision problems - require the simultaneous consideration of multiple criteria and the assessment of their robustness based on multiple datasets, one per criterion. This paper develops a general scenario theory for multi-criteria data-driven decision making. A central innovation lies in the collective treatment of the risks associated with violations of individual criteria, which yields substantially more accurate robustness certificates than those derived from a naive application of standard results. In turn, this approach enables a sharper quantification of the robustness level with which all criteria are simultaneously satisfied. The proposed framework applies broadly to multi-criteria data-driven decision problems, providing a principled, scalable, and theoretically grounded methodology for design under uncertainty.