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计算线性优化的弱反事实解释:一类新的双层模型与定制的惩罚交替方向法

Computing weak counterfactual explanations for linear optimization: A new class of bilevel models and a tailored penalty alternating direction method

European Journal of Operational Research · 2026
被引 0 · 同刊同年前 10%
ABS 4

中文导读

针对线性优化问题,提出一类新的线性双层优化模型来生成反事实解释,并设计了一种定制的惩罚交替方向法求解,在能源系统模型和NETLIB问题上验证了有效性。

Abstract

In recent years, significant attention has been devoted to the issue of explainability in automated decision-making tools. The idea is to explain the outcome of a model by presenting a certain change in the input of the model so that the outcome changes significantly. In this paper, we study this question for linear optimization problems as an automated decision-making tool. This leads to a new class of linear bilevel optimization problems that have more nonlinearities in their single-level reformulations compared to traditionally studied linear bilevel problems. For this class of problems, we present a tailored penalty alternating direction method and present its convergence theory that mainly ensures that we compute stationary points of the single-level reformulation. Finally, we illustrate the applicability of this method using the example of a real-world energy system model as well as by computing counterfactual explanations for a large set of linear optimization problems from the NETLIB as it has been proposed in the recent literature.

线性优化可解释性双层优化反事实解释