Elucidating linear programs by neural encodings.

IF 4.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Frontiers in Artificial Intelligence Pub Date : 2025-06-18 eCollection Date: 2025-01-01 DOI:10.3389/frai.2025.1549085
Florian Peter Busch, Matej Zečević, Kristian Kersting, Devendra Singh Dhami
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引用次数: 0

Abstract

Linear Programs (LPs) are one of the major building blocks of AI and have championed recent strides in differentiable optimizers for learning systems. While efficient solvers exist for even high-dimensional LPs, explaining their solutions has not received much attention yet, as explainable artificial intelligence (XAI) has mostly focused on deep learning models. LPs are mostly considered white-box and thus assumed simple to explain, but we argue that they are not easy to understand in terms of relationships between inputs and outputs. To mitigate this rather non-explainability of LPs we show how to adapt attribution methods by encoding LPs in a neural fashion. The encoding functions consider aspects such as the feasibility of the decision space, the cost attached to each input, and the distance to special points of interest. Using a variety of LPs, including a very large-scale LP with 10k dimensions, we demonstrate the usefulness of explanation methods using our neural LP encodings, although the attribution methods Saliency and LIME are indistinguishable for low perturbation levels. In essence, we demonstrate that LPs can and should be explained, which can be achieved by representing an LP as a neural network.

用神经编码解释线性程序。
线性规划(lp)是人工智能的主要组成部分之一,近年来在学习系统的可微优化器方面取得了长足的进步。虽然高维有限合伙人也有高效的求解器,但解释它们的解决方案还没有受到太多关注,因为可解释人工智能(XAI)主要集中在深度学习模型上。有限合伙人大多被认为是白盒的,因此被认为很容易解释,但我们认为,就投入和产出之间的关系而言,它们不容易理解。为了减轻这种相当不可解释的lp,我们展示了如何通过以神经方式编码lp来适应归因方法。编码函数考虑决策空间的可行性、每个输入的附加成本以及到特殊兴趣点的距离等方面。使用各种LP,包括具有10k维度的非常大规模LP,我们证明了使用我们的神经LP编码解释方法的有效性,尽管归因方法Saliency和LIME在低扰动水平下无法区分。从本质上讲,我们证明LP可以而且应该被解释,这可以通过将LP表示为神经网络来实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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