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AN ADAPTIVELY TRAINED KERNEL-BASED NONLINEAR REPRESENTOR FOR HANDWRITTEN DIGIT CLASSIFICATION

机译:基于自适应训练核的非线性数字表示的手写体分类

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摘要

In practice, retraining a trained classifier is necessary when novel data become available. This paper adopts an incremental learning procedure to adaptively train a Kernel-based Nonlinear Representor(KNR), a recently presented nonlinear classifier for optimal pattern representation, so that its generalization ability may be evaluated in time-variant situation and a sparser representation is obtained for computationally intensive tasks. The addressed techniques are applied to handwritten digit classification to illustrate the feasibility for pattern recognition.
机译:在实践中,当新数据可用时,有必要对训练有素的分类器进行重新训练。本文采用增量学习的方法来自适应地训练基于核的非线性表示器(KNR),这是一种最近提出的用于优化模式表示的非线性分类器,因此可以在时变情况下评估其泛化能力,并获得稀疏表示。计算密集型任务。解决的技术应用于手写数字分类,以说明模式识别的可行性。

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