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首页> 外文期刊>Neural Computing & Applications >An incremental online semi-supervised active learning algorithm based on self-organizing incremental neural network
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An incremental online semi-supervised active learning algorithm based on self-organizing incremental neural network

机译:基于自组织增量神经网络的增量在线半监督主动学习算法

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摘要

An incremental online semi-supervised active learning algorithm, which is based on a self-organizing incremental neural network (SOINN), is proposed. This paper describes improvement of the two-layer SOINN to a single-layer SOINN to represent the topological structure of input data and to separate the generated nodes into different groups and subclusters. We then actively label some teacher nodes and use such teacher nodes to label all unlabeled nodes. The proposed method can learn from both labeled and unlabeled samples. It can query the labels of some important samples rather than selecting the labeled samples randomly. It requires neither prior knowledge, such as the number of nodes, nor the number of classes. It can automatically learn the number of nodes and teacher vectors required for a current task. Moreover, it can realize online incremental learning. Experiments using artificial data and real-world data show that the proposed method performs effectively and efficiently.
机译:提出了一种基于自组织增量神经网络(SOINN)的增量在线半监督主动学习算法。本文介绍了将两层SOINN改进为单层SOINN的方法,以表示输入数据的拓扑结构,并将生成的节点分为不同的组和子类。然后,我们主动标记一些教师节点,并使用此类教师节点标记所有未标记的节点。所提出的方法可以从标记和未标记的样本中学习。它可以查询一些重要样本的标签,而不是随机选择被标记的样本。它既不需要先验知识,例如节点数,也不需要类数。它可以自动了解当前任务所需的节点数和教师向量。而且,它可以实现在线增量学习。使用人工数据和真实世界数据进行的实验表明,该方法有效有效。

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