Algebraically explainable controllers: decision trees and support vector machines join forces

IF 1.1 3区 计算机科学 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal on Software Tools for Technology Transfer Pub Date : 2023-06-01 DOI:10.1007/s10009-023-00716-z
Florian Jüngermann, Jan Křetínský, Maximilian Weininger
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引用次数: 1

Abstract

Abstract Recently, decision trees (DT) have been used as an explainable representation of controllers (a.k.a. strategies, policies, schedulers). Although they are often very efficient and produce small and understandable controllers for discrete systems, complex continuous dynamics still pose a challenge. In particular, when the relationships between variables take more complex forms, such as polynomials, they cannot be obtained using the available DT learning procedures. In contrast, support vector machines provide a more powerful representation, capable of discovering many such relationships, but not in an explainable form. Therefore, we suggest to combine the two frameworks to obtain an understandable representation over richer, domain-relevant algebraic predicates. We demonstrate and evaluate the proposed method experimentally on established benchmarks.
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代数上可解释的控制器:决策树和支持向量机联合起来
最近,决策树(DT)被用作控制器(又称策略、策略、调度程序)的可解释表示。虽然它们通常非常有效,并且可以为离散系统产生小型且易于理解的控制器,但复杂的连续动力学仍然构成挑战。特别是,当变量之间的关系采用更复杂的形式时,例如多项式,它们无法使用可用的DT学习程序获得。相比之下,支持向量机提供了更强大的表示,能够发现许多这样的关系,但不能以可解释的形式。因此,我们建议将这两个框架结合起来,以获得更丰富的、与领域相关的代数谓词的可理解表示。我们在已建立的基准上对所提出的方法进行了实验验证和评估。
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来源期刊
CiteScore
4.50
自引率
6.70%
发文量
39
期刊介绍: The International Journal on Software Tools for Technology Transfer (STTT) provides a forum for the discussion of all aspects of tools supporting the development of computer systems. It offers, above all, a tool-oriented link between academic research and industrial practice. Tool support for the development of reliable and correct computer-based systems is of growing importance, and a wealth of design methodologies, algorithms, and associated tools have been developed in different areas of computer science. However, each area has its own culture and terminology, preventing researchers from taking advantage of the results obtained by colleagues in other fields. Tool builders are often unaware of the work done by others, and thus unable to apply it. The situation is even more critical when considering the transfer of new technology into industrial practice.
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