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首页> 外文期刊>Information Sciences: An International Journal >On-line assurance of interpretability criteria in evolving fuzzy systems - Achievements, new concepts and open issues
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On-line assurance of interpretability criteria in evolving fuzzy systems - Achievements, new concepts and open issues

机译:不断发展的模糊系统中的可解释性标准的在线保证-成就,新概念和未解决的问题

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摘要

In this position paper, we are discussing achievements and open issues in the interpretability of evolving fuzzy systems (EFS). In addition to pure on-line complexity reduction approaches, which can be an important direction for increasing the transparency of the evolved fuzzy systems, we examine the state-of-the-art and provide further investigations and concepts regarding the following interpretability aspects: distinguishability, simplicity, consistency, coverage and completeness, feature importance levels, rule importance levels and interpretation of consequents. These are well-known and widely accepted criteria for the interpretability of expert-based and standard data-driven fuzzy systems in batch mode. So far, most have been investigated only rudimentarily in the context of evolving fuzzy systems, trained incrementally from data streams: EFS have focussed mainly on precise modeling, aiming for models of high predictive quality. Only in a few cases, the integration of complexity reduction steps has been handled. This paper thus seeks to close this gap by pointing out new ways of making EFS more transparent and interpretable within the scope of the criteria mentioned above. The role of knowledge expansion, a peculiar concept in EFS, will be also addressed. One key requirement in our investigations is the availability of all concepts for on-line usage, which means they should be incremental or at least allow fast processing.
机译:在本立场文件中,我们将讨论不断发展的模糊系统(EFS)的可解释性方面的成就和未解决的问题。除了纯粹的在线复杂度降低方法(这可能是提高已发展的模糊系统的透明度的重要方向)之外,我们还将研究最新技术,并针对以下可解释性方面提供进一步的研究和概念: ,简单性,一致性,覆盖范围和完整性,功能重要性级别,规则重要性级别以及对结果的解释。这些是批处理模式下基于专家和标准数据驱动的模糊系统的可解释性的众所周知的标准。到目前为止,大多数研究只是在不断发展的模糊系统的背景下进行的,仅从数据流中进行增量训练:EFS主要集中在精确建模上,旨在提供高预测质量的模型。仅在少数情况下,复杂度降低步骤的集成才得到处理。因此,本文旨在通过指出在上述标准范围内使EFS更加透明和可解释的新方法来缩小这一差距。知识扩展(EFS中一个特殊的概念)的作用也将得到解决。我们调查的一个关键要求是,所有概念都可以在线使用,这意味着它们应该是渐进式的,或者至少允许快速处理。

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