融合人类专家反馈不确定性的进化模糊神经分类器。

IF 2.7 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Evolving Systems Pub Date : 2023-01-01 DOI:10.1007/s12530-022-09455-z
Paulo Vitor de Campos Souza, Edwin Lughofer
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引用次数: 3

摘要

进化模糊神经网络是一种能够在各种情况下解决复杂问题的模型。一般来说,模型评估的数据质量直接影响结果的质量。有些程序在数据收集过程中会产生不确定性,专家可以识别这些不确定性,从而选择更合适的模型训练形式。本文提出了一种称为EFNC- u的方法,将标记不确定性的专家输入集成到进化模糊神经分类器(EFNC)中。专家提供的类标签输入考虑了不确定性,他们可能对自己的标签不完全有信心,或者对数据处理的应用场景经验有限。此外,我们的目标是创建高度可解释的模糊分类规则,以更好地理解该过程,从而使用户能够从模型中获得新的知识。为了证明我们的技术,我们在网络入侵和拍卖欺诈检测两种应用场景下进行了二元模式分类测试。通过在EFNC-U的更新过程中明确考虑类标签的不确定性,与完全(和盲目)更新具有不确定数据的分类器相比,获得了更高的准确率趋势线。(模拟的)标签不确定性小于20%的集成导致与使用原始流(不受不确定性影响)相似的准确性趋势。这证明了我们的方法在这种不确定性水平上的稳健性。最后,为特定应用(拍卖欺诈识别)引出了可解释的规则,这些规则具有减少的(因此可读的)前置长度和随后类标签中的确定性值。此外,根据形成相应规则的样本的不确定性水平,得出规则的平均期望不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Evolving fuzzy neural classifier that integrates uncertainty from human-expert feedback.

Evolving fuzzy neural networks are models capable of solving complex problems in a wide variety of contexts. In general, the quality of the data evaluated by a model has a direct impact on the quality of the results. Some procedures can generate uncertainty during data collection, which can be identified by experts to choose more suitable forms of model training. This paper proposes the integration of expert input on labeling uncertainty into evolving fuzzy neural classifiers (EFNC) in an approach called EFNC-U. Uncertainty is considered in class label input provided by experts, who may not be entirely confident in their labeling or who may have limited experience with the application scenario for which the data is processed. Further, we aimed to create highly interpretable fuzzy classification rules to gain a better understanding of the process and thus to enable the user to elicit new knowledge from the model. To prove our technique, we performed binary pattern classification tests within two application scenarios, cyber invasion and fraud detection in auctions. By explicitly considering class label uncertainty in the update process of the EFNC-U, improved accuracy trend lines were achieved compared to fully (and blindly) updating the classifiers with uncertain data. Integration of (simulated) labeling uncertainty smaller than 20% led to similar accuracy trends as using the original streams (unaffected by uncertainty). This demonstrates the robustness of our approach up to this uncertainty level. Finally, interpretable rules were elicited for a particular application (auction fraud identification) with reduced (and thus readable) antecedent lengths and with certainty values in the consequent class labels. Additionally, an average expected uncertainty of the rules were elicited based on the uncertainty levels in those samples which formed the corresponding rules.

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来源期刊
Evolving Systems
Evolving Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
7.80
自引率
6.20%
发文量
67
期刊介绍: Evolving Systems covers surveys, methodological, and application-oriented papers in the area of dynamically evolving systems. ‘Evolving systems’ are inspired by the idea of system model evolution in a dynamically changing and evolving environment. In contrast to the standard approach in machine learning, mathematical modelling and related disciplines where the model structure is assumed and fixed a priori and the problem is focused on parametric optimisation, evolving systems allow the model structure to gradually change/evolve. The aim of such continuous or life-long learning and domain adaptation is self-organization. It can adapt to new data patterns, is more suitable for streaming data, transfer learning and can recognise and learn from unknown and unpredictable data patterns. Such properties are critically important for autonomous, robotic systems that continue to learn and adapt after they are being designed (at run time). Evolving Systems solicits publications that address the problems of all aspects of system modelling, clustering, classification, prediction and control in non-stationary, unpredictable environments and describe new methods and approaches for their design. The journal is devoted to the topic of self-developing, self-organised, and evolving systems in its entirety — from systematic methods to case studies and real industrial applications. It covers all aspects of the methodology such as Evolving Systems methodology Evolving Neural Networks and Neuro-fuzzy Systems Evolving Classifiers and Clustering Evolving Controllers and Predictive models Evolving Explainable AI systems Evolving Systems applications but also looking at new paradigms and applications, including medicine, robotics, business, industrial automation, control systems, transportation, communications, environmental monitoring, biomedical systems, security, and electronic services, finance and economics. The common features for all submitted methods and systems are the evolving nature of the systems and the environments. The journal is encompassing contributions related to: 1) Methods of machine learning, AI, computational intelligence and mathematical modelling 2) Inspiration from Nature and Biology, including Neuroscience, Bioinformatics and Molecular biology, Quantum physics 3) Applications in engineering, business, social sciences.
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