DECISION MAKING IN DYNAMIC ENVIRONMENTS AN APPLICATION OF MACHINE LEARNING TO THE ANALYTICAL HIERARCHY PROCESS

Q4 Decision Sciences
R. Jassemi-Zargani, Caelum Kamps
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引用次数: 2

Abstract

The purpose of this work is to propose a method of algorithmic decision making that builds on the Analytical Hierarchy Process by applying reinforcement learning. Decision making in dynamic environments requires adaptability as new information becomes available. The Analytical Hierarchy Process (AHP) provides a method for comparative decision making but is insufficient to handle information that becomes available over time. Using the opinions of one or many subject matter experts and the AHP, the relative importance of evidence can be quantified. However, the ability to explicitly measure the interdependencies is more challenging. The interdependency between the different evidence can be exploited to improve the model accuracy, particularly when information is missing or uncertain. To establish this ability within a decision-making tool, the AHP method can be optimized through a stochastic gradient descent algorithm. To illustrate the effectiveness of the proposed method, an experiment was conducted on air target threat classification in time series developing scenarios.
动态环境中的决策是机器学习在分析层次过程中的应用
这项工作的目的是通过应用强化学习,提出一种基于分析层次过程的算法决策方法。动态环境中的决策需要随着新信息的出现而具有适应性。层次分析法(AHP)提供了一种比较决策的方法,但不足以处理随着时间推移而变得可用的信息。利用一个或多个主题专家的意见和层次分析法,可以量化证据的相对重要性。然而,显式度量相互依赖性的能力更具挑战性。可以利用不同证据之间的相互依赖性来提高模型的准确性,特别是在信息缺失或不确定的情况下。为了在决策工具中建立这种能力,AHP方法可以通过随机梯度下降算法进行优化。为了验证该方法的有效性,对时间序列发展情景下的空中目标威胁分类进行了实验。
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来源期刊
International Journal of the Analytic Hierarchy Process
International Journal of the Analytic Hierarchy Process Decision Sciences-Decision Sciences (all)
CiteScore
2.30
自引率
0.00%
发文量
22
审稿时长
12 weeks
期刊介绍: IJAHP is a scholarly journal that publishes papers about research and applications of the Analytic Hierarchy Process(AHP) and Analytic Network Process(ANP), theories of measurement that can handle tangibles and intangibles; these methods are often applied in multicriteria decision making, prioritization, ranking and resource allocation, especially when groups of people are involved. The journal encourages research papers in both theory and applications. Empirical investigations, comparisons and exemplary real-world applications in diverse areas are particularly welcome.
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