首页> 外文会议>Intelligent Systems Design and Applications, 2009. ISDA '09 >Linguistic Modifiers to Improve the Accuracy-Interpretability Trade-Off in Multi-Objective Genetic Design of Fuzzy Rule Based Classifier Systems
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Linguistic Modifiers to Improve the Accuracy-Interpretability Trade-Off in Multi-Objective Genetic Design of Fuzzy Rule Based Classifier Systems

机译:基于模糊规则的分类器系统多目标遗传设计中改进精度-可解释性折衷的语言修饰符

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In the last few years a number of studies have focused on the design of fuzzy rule-based systems which are interpretable (i.e. simple and easy to read), while maintaining quite a high level of accuracy. Therefore, a new tendency in the fuzzy modeling that looks for a good balance between interpretability and accuracy is increasing in importance. In fact, recently multi-objective evolutionary algorithms have been applied to improve the difficult trade-off between interpretability and accuracy. In this paper, we focus both on rule learning and fuzzy memberships tuning proposing a technique based on a multi-objective genetic algorithm (MOGA) to design deep-tuned Fuzzy Rule Based Classifier Systems (FRBCSs) from examples. Our technique generates a FRBCS which includes certain operators (known as linguistic hedges or modifiers) able to improve accuracy without losses in interpretability. In our proposal the MOGA is used to learn the FRBCS and to set the operators in order to optimize both model accuracy and metrics of interpretability, compactness and transparency in a single algorithm. The resulting Multi-Objective Genetic Fuzzy System (MOGFS) is evaluated through comparative examples based on well-known data sets in the pattern classification field.
机译:在过去的几年中,许多研究集中在可解释的(即简单易读)基于模糊规则的系统的设计上,同时保持了很高的准确性。因此,在模糊建模中寻求在可解释性和准确性之间寻求良好平衡的新趋势正变得越来越重要。实际上,近来多目标进化算法已被应用来改善可解释性和准确性之间的艰难权衡。在本文中,我们将重点放在规则学习和模糊成员资格调整上,提出一种基于多目标遗传算法(MOGA)的技术,以根据示例设计深度调整的基于模糊规则的分类器系统(FRBCS)。我们的技术会生成FRCCS,其中包括某些运算符(称为语言树篱或修饰语),这些运算符能够提高准确性而又不会降低可解释性。在我们的建议中,MOGA用于学习FRBCS并设置运算符,以便在单个算法中优化模型的准确性以及可解释性,紧凑性和透明度的度量。通过比较示例,基于模式分类领域中的众所周知的数据集,对所得的多目标遗传模糊系统(MOGFS)进行了评估。

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