**超要約:**AIの「なんで?」を解き明かす魔法🪄IT企業の未来を明るくする研究だよ!
✨ ギャル的キラキラポイント ✨
● AIの決定理由が分かる!まるで占い🔮結果の説明みたいにね! ● IT企業の信頼度爆上がり!顧客も大喜びだね🥰 ● 新しいビジネスチャンス到来!キラキラ起業のチャンス✨
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Counterfactual explanations (CEs) offer a human-understandable way to explain decisions by identifying specific changes to the input parameters of a base or present model that would lead to a desired change in the outcome. For optimization models, CEs have primarily been studied in limited contexts and little research has been done on CEs for general integer optimization problems. In this work, we address this gap. We first show that the general problem of constructing a CE is $\Sigma_2^p$-complete even for binary integer programs with just a single mutable constraint. Second, we propose solution algorithms for several of the most tractable special cases: (i) mutable objective parameters, (ii) a single mutable constraint, (iii) mutable right-hand-side, and (iv) all input parameters can be modified. We evaluate our approach using classical knapsack problem instances, focusing on cases with mutable constraint parameters. Additionally, we present experiments on the resource constrained shortest path problem.