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Evolving fuzzy classifiers using different model architectures

机译:使用不同模型架构的不断发展的模糊分类器

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In this paper we present two novel approaches for on-line evolving fuzzy classifiers, called eClass and FLEXFIS-Class. Both methods can be applied with different model architectures, including single model (SM) with class labels as consequents, classification hyper-planes as consequents, and multi-model (MM) architecture. Additionally, eClass can have a multi-input-multi-output (MIMO) architecture with multiple hyper-planes as consequents of each fuzzy rule. The difference between MM and MIMO architectures is that the former one applies one separate and independent fuzzy rule-based (FRB) classifier for each class and is using an indicator labelling scheme, while the latter one applies a single FRB where the rules are MIMO rather than MISO. Both, eClass and FLEXFIS-Class methods are designed to work on a per-sample basis and are thus one-pass, incremental. Additionally, their structure (FRB) is evolving rather than fixed. It adapts their parameters in antecedent and consequent parts with any newly loaded sample. A special emphasis is placed on advanced issues for improving accuracy and robustness, including a thorough comparison between global and local learning of consequent functions, a novel approach for detecting of and reacting on drifts in the data streams and an enhanced outlier treatment strategy. The methods and their extensions according to the advanced issues are evaluated on one benchmark problem of handwritten images recognition as well as on a real-life problem of image classification framework, where images should be classified into good and bad ones during an on-line and interactive production process.
机译:在本文中,我们提出了两种用于在线演化模糊分类器的新颖方法,称为eClass和FLEXFIS-Class。两种方法均可用于不同的模型体系结构,包括具有类标签作为结果的单一模型(SM),具有结果类的分类超平面以及多模型(MM)体系结构。此外,eClass可以具有带有多个超平面的多输入多输出(MIMO)体系结构,这是每个模糊规则的结果。 MM和MIMO体系结构之间的区别在于,前者对每个类别应用一个单独且独立的基于模糊规则(FRB)的分类器,并使用指示符标记方案,而后者则应用单个FRB,其中规则是MIMO而不是比MISO eClass和FLEXFIS-Class方法都设计为基于每个样本工作,因此都是一次性通过的。此外,它们的结构(FRB)正在演变而不是固定的。它可以在任何新加载的样本的前期和后续部分中调整其参数。特别强调了用于提高准确性和鲁棒性的高级问题,包括对后续功能的全局和局部学习进行彻底的比较,检测和响应数据流中的漂移的新方法以及增强的异常值处理策略。在一个手写图像识别的基准问题以及一个现实的图像分类框架问题上评估了根据高级问题提出的方法及其扩展,在此过程中,应将图像在在线和分类过程中分为好和坏。交互式生产过程。

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