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A hierarchical prototype-based approach for classification

机译:基于分级的分类方法

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摘要

In this paper, a novel hierarchical prototype-based approach for classification is proposed. This approach is able to perceive the data space and derive the multimodal distributions from streaming data at different levels of granularity in an online manner, based on which it further identifies meaningful prototypes to self-organize and self-evolve its hierarchical structure for classification. Thanks to the prototype-based nature, the system structure of the proposed classifier is highly transparent, and its learning process is of "one pass" type and computationally lean. Its decision-making process follows the "nearest prototype" principle and is fully explainable. The proposed approach is capable of presenting the learned knowledge from data in an easy-to-interpret prototype-based hierarchical form to users, and is an attractive tool for solving large-scale, complex real-world problems. Numerical examples based on various benchmark problems justify the validity and effectiveness of the proposed concept and general principles. (C) 2019 Elsevier Inc. All rights reserved.
机译:本文提出了一种用于分类的新型分层原型方法。该方法能够以在线方式从不同粒度级别的流传输数据中的数据空间察觉到数据空间并得出多模式分布,基于该数据,以在线方式,它进一步识别出有意义的原型来自组织和自我演化其分层结构进行分类。由于基于原型的性质,所提出的分类器的系统结构非常透明,其学习过程是“一移”类型和计算倾斜。其决策过程遵循“最近的原型”原则,并完全解释。所提出的方法能够以易于解释的基于原型的分层形式从数据呈现学到的基于用户的学习知识,并且是解决大规模,复杂的现实问题的有吸引力的工具。基于各种基准问题的数值示例证明了拟议概念和一般原则的有效性和有效性。 (c)2019 Elsevier Inc.保留所有权利。

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