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An empirical evaluation of the inferential capacity of defeasible argumentation, non-monotonic fuzzy reasoning and expert systems

机译:缺乏辩论,非单调模糊推理和专家系统的推论能力的实证评价

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Several non-monotonic formalisms exist in the field of Artificial Intelligence for reasoning under uncertainty. Many of these are deductive and knowledge-driven, and also employ procedural and semi-declarative techniques for inferential purposes. Nonetheless, limited work exist for the comparison across distinct techniques and in particular the examination of their inferential capacity. Thus, this paper focuses on a comparison of three knowledge-driven approaches employed for non-monotonic reasoning, namely expert systems, fuzzy reasoning and defeasible argumentation. A knowledge-representation and reasoning problem has been selected: modelling and assessing mental workload. This is an ill-defined construct, and its formalisation can be seen as a reasoning activity under uncertainty. An experimental work was performed by exploiting three deductive knowledge bases produced with the aid of experts in the field. These were coded into models by employing the selected techniques and were subsequently elicited with data gathered from humans. The inferences produced by these models were in turn analysed according to common metrics of evaluation in the field of mental workload, in specific validity and sensitivity. Findings suggest that the variance of the inferences of expert systems and fuzzy reasoning models was higher, highlighting poor stability. Contrarily, that of argument-based models was lower, showing a superior stability of its inferences across knowledge bases and under different system configurations. The originality of this research lies in the quantification of the impact of defeasible argumentation. It contributes to the field of logic and non-monotonic reasoning by situating defeasible argumentation among similar approaches of non-monotonic reasoning under uncertainty through a novel empirical comparison. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在人工智能领域存在几种非单调形式主义,以在不确定性下推理。其中许多是演绎和知识驱动的,并且还采用程序和半导声技术以推动目的。尽管如此,存在有限的工作,以跨不同技术的比较,特别是考察其推论能力。因此,本文侧重于采用非单调推理的三种知识驱动方法的比较,即专家系统,模糊推理和缺陷的论证。选择了知识 - 表示和推理问题:建模和评估心理工作量。这是一个不确定的构造,它可以被视为在不确定性下的推理活动。通过利用借助该领域的专家产生的三个演绎知识库进行实验工作。这些通过采用所选技术编码成模型,随后被引发与从人类收集的数据引发。这些模型产生的推论又根据心理工作量领域的常见度量分析,具体有效性和敏感性。调查结果表明,专家系统的推论和模糊推理模型的变化更高,突出稳定性差。相反,基于参数的模型的较低,横跨知识库和不同系统配置的推广稳定性较低。该研究的原创性在于量化缺陷辩论的影响。通过新的经验比较,通过情况下出于非单调推理的相似方法与不确定性的不同方法有助于逻辑和非单调推理领域。 (c)2020 elestvier有限公司保留所有权利。

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