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Evolving clustering, classification and regression with TEDA

机译:使用TEDA进行聚类,分类和回归

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In this article the novel clustering and regression methods TEDACluster and TEDAPredict methods are described additionally to recently proposed evolving classifier TEDAClass. The algorithms for classification, clustering and regression are based on the recently proposed AnYa type fuzzy rule based system. The novel methods use the recently proposed TEDA framework capable of recursive processing of large amounts of data. The framework is capable of computationally cheap exact update of data per sample, and can be used for training ‘from scratch’. All three algorithms are evolving that is they are capable of changing its own structure during the update stage, which allows to follow the changes within the model pattern.
机译:在本文中,除了最近提出的演进分类器TEDAClass外,还描述了新颖的聚类和回归方法TEDACluster和TEDAPredict方法。用于分类,聚类和回归的算法基于最近提出的基于AnYa型模糊规则的系统。该新颖方法使用了最近提出的能够递归处理大量数据的TEDA框架。该框架能够以计算方式便宜地精确地更新每个样本的数据,并可用于“从头开始”训练。所有这三种算法都在发展,即它们能够在更新阶段更改其自身的结构,从而可以跟踪模型模式中的更改。

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