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A self-training hierarchical prototype-based approach for semi-supervised classification

机译:基于自我训练的分层原型的半监督分类方法

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This paper introduces a novel self-training hierarchical prototype-based approach for semi-supervised classification. The proposed approach firstly identifies meaningful prototypes from labelled samples at multiple levels of granularity and, then, self-organizes a highly transparent, multi-layered recognition model by arranging them in a form of pyramidal hierarchies. After this, the learning model continues to self-evolve its structure and self-expand its knowledge base to incorporate new patterns recognized from unlabelled samples by exploiting the pseudo-label technique. Thanks to its prototype-based nature, the overall computational process of the proposed approach is highly explainable and traceable. Experimental studies with various benchmark image recognition problems demonstrate the state-of-the-art performance of the proposed approach, showing its strong capability to mine key information from unlabelled data for classification. (C) 2020 Elsevier Inc. All rights reserved.
机译:本文介绍了一种新颖的自我训练分层原型方法,用于半监督分类。 所提出的方法首先将来自标记的样本的有意义的原型识别在多级粒度下,然后通过以金字塔级层次结构的形式安排它们来自组织高度透明的多层识别模型。 在此之后,学习模型继续自化其结构,并自我扩展其知识库,通过利用伪标签技术来结合从未标签的样本中识别的新模式。 由于其原型基础,所提出的方法的整体计算过程是高度解释和可追溯的。 具有各种基准图像识别问题的实验研究证明了所提出的方法的最先进的性能,显示其对挖掘来自未标记数据进行分类的关键信息的强大能力。 (c)2020 Elsevier Inc.保留所有权利。

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