Dual feature-based and example-based explanation methods.

IF 4.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2025-02-10 eCollection Date: 2025-01-01 DOI:10.3389/frai.2025.1506074
Andrei Konstantinov, Boris Kozlov, Stanislav Kirpichenko, Lev Utkin, Vladimir Muliukha
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Abstract

A new approach to the local and global explanation based on selecting a convex hull constructed for the finite number of points around an explained instance is proposed. The convex hull allows us to consider a dual representation of instances in the form of convex combinations of extreme points of a produced polytope. Instead of perturbing new instances in the Euclidean feature space, vectors of convex combination coefficients are uniformly generated from the unit simplex, and they form a new dual dataset. A dual linear surrogate model is trained on the dual dataset. The explanation feature importance values are computed by means of simple matrix calculations. The approach can be regarded as a modification of the well-known model LIME. The dual representation inherently allows us to get the example-based explanation. The neural additive model is also considered as a tool for implementing the example-based explanation approach. Many numerical experiments with real datasets are performed for studying the approach. A code of proposed algorithms is available. The proposed results are fundamental and can be used in various application areas. They do not involve specific human subjects and human data.

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基于特征和基于实例的双重解释方法。
提出了一种局部解释和全局解释的新方法,该方法基于选择一个被解释实例周围有限个数的点构造的凸包。凸包允许我们考虑以生成多面体的极值点的凸组合形式的实例的对偶表示。该方法不干扰欧几里得特征空间中的新实例,而是由单元单纯形统一生成凸组合系数向量,形成新的对偶数据集。在双数据集上训练了一个双线性代理模型。用简单的矩阵计算方法计算解释特征的重要值。该方法可以看作是对著名的LIME模型的改进。对偶表示本质上允许我们得到基于实例的解释。神经加性模型也被认为是实现基于实例的解释方法的工具。为了研究该方法,在实际数据集上进行了大量的数值实验。提出的算法的代码是可用的。所提出的结果是基本的,可用于各种应用领域。它们不涉及特定的人类受试者和人类数据。
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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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