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AUTO-ASSOCIATIVE NEURAL NETWORK SYSTEM FOR RECOGNITION

机译:用于识别的自动联想神经网络系统

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Recently, a nonlinear dimension reduction technique, called Autoencoder, had been proposed.It can efficiently carry out mappings in both directions between the original data and low-dimensional code space.However, a single Autoencoder commonly maps all data into a single subspace.If the original data set have remarkable different categories (for example, characters and handwritten digits), then only one Autoencoder will not be efficient To deal with the data of remarkable different categories, this paper proposes an Auto-Associative Neural Network System (AANNS) based on multiple Autoencoders.The novel technique has the functions of auto-association, incremental learning and local update.Excitingly, these functions are the foundations of cognitive science.Experimental results on benchmark MNIST digit dataset and handwritten character-digit dataset show the advantages of the proposed model.
机译:最近,有人提出了一种称为自动编码器的非线性降维技术,该技术可以有效地在原始数据和低维代码空间之间双向进行映射,但是单个自动编码器通常会将所有数据映射到单个子空间中。原始数据集具有明显不同的类别(例如,字符和手写数字),因此仅一个自动编码器将无法有效处理大量不同类别的数据,本文提出了一种基于自动关联神经网络系统(AANNS)的算法。这项新颖的技术具有自动关联,增量学习和局部更新的功能。令人兴奋的是,这些功能是认知科学的基础。基准MNIST数字数据集和手写字符数字数据集的实验结果表明了该技术的优势。建议的模型。

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