Learning ensembles of interpretable simple structure

IF 4.5 3区 管理学 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Gaurav Arwade, Sigurdur Olafsson
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引用次数: 0

Abstract

Decision-making in complex systems often relies on machine learning models, yet highly accurate models such as XGBoost and neural networks can obscure the reasoning behind their predictions. In operations research applications, understanding how a decision is made is often as crucial as the decision itself. Traditional interpretable models, such as decision trees and logistic regression, provide transparency but may struggle with datasets containing intricate feature interactions. However, complexity in decision-making stems from interactions that are only relevant within certain subsets of data. Within these subsets, feature interactions may be simplified, forming simple structures where simple interpretable models can perform effectively. We propose a bottom-up simple structure-identifying algorithm that partitions data into interpretable subgroups known as simple structures, where feature interactions are minimized, allowing simple models to be trained within each subgroup. We demonstrate the robustness of the algorithm on synthetic data and show that the decision boundaries derived from simple structures are more interpretable and aligned with the intuition of the domain than those learned from a global model. By improving both explainability and predictive accuracy, our approach provides a principled framework for decision support in applications where model transparency is essential.

Abstract Image

学习可解释的简单结构的集合
复杂系统中的决策通常依赖于机器学习模型,但XGBoost和神经网络等高度精确的模型可能会掩盖其预测背后的推理。在运筹学应用中,理解决策是如何做出的通常与决策本身一样重要。传统的可解释模型,如决策树和逻辑回归,提供了透明度,但可能难以处理包含复杂特征交互的数据集。然而,决策的复杂性源于仅在某些数据子集内相关的交互。在这些子集中,可以简化特征交互,形成简单的结构,其中简单的可解释模型可以有效地执行。我们提出了一种自下而上的简单结构识别算法,该算法将数据划分为可解释的子组,称为简单结构,其中特征交互最小化,允许在每个子组中训练简单模型。我们证明了该算法在综合数据上的鲁棒性,并表明从简单结构中获得的决策边界比从全局模型中学习的决策边界更具可解释性,并且更符合领域的直觉。通过提高可解释性和预测准确性,我们的方法为模型透明度至关重要的应用程序中的决策支持提供了一个原则性框架。
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来源期刊
Annals of Operations Research
Annals of Operations Research 管理科学-运筹学与管理科学
CiteScore
7.90
自引率
16.70%
发文量
596
审稿时长
8.4 months
期刊介绍: The Annals of Operations Research publishes peer-reviewed original articles dealing with key aspects of operations research, including theory, practice, and computation. The journal publishes full-length research articles, short notes, expositions and surveys, reports on computational studies, and case studies that present new and innovative practical applications. In addition to regular issues, the journal publishes periodic special volumes that focus on defined fields of operations research, ranging from the highly theoretical to the algorithmic and the applied. These volumes have one or more Guest Editors who are responsible for collecting the papers and overseeing the refereeing process.
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