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Semi-supervised incremental learning

机译:半监督增量学习

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摘要

The paper introduces a hybrid evolving architecture for dealing with incremental learning. It consists of two components: resource allocating neural network (RAN) and growing Gaussian mixture model (GGMM). The architecture is motivated by incrementality on one hand and on the other hand by the possibility to handle unlabeled data along with the labeled one, given that the architecture is dedicated to classification problems. The empirical evaluation shows the efficiency of the proposed hybrid learning architecture.
机译:本文介绍了一种用于处理增量学习的混合演进架构。它由两个部分组成:资源分配神经网络(RAN)和增长型高斯混合模型(GGMM)。假定该体系结构专用于分类问题,那么一方面该体系结构受增量性的驱动,另一方面受到与未标记数据一起处理未标记数据的可能性的激励。实证评估表明了所提出的混合学习架构的效率。

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