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Classifying glyphs by combining evolution and learning

机译:通过结合进化和学习对字形进行分类

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Artificial neural networks are used to classify the writing system of an unseen glyph. The complexity of the problem necessitates a large network, which hampers the training of the weights. Three hybrid algorithms — combining evolution and back-propagation learning — are compared to the standard back-propagation algorithm. The results indicate that pure back-propagation is preferable to any of the hybrid algorithms. Back-propagation had both the best classification results and the fastest runtime, in addition to the least complex implementation.
机译:人工神经网络用于对看不见的字形的书写系统进行分类。问题的复杂性需要一个庞大的网络,这会阻碍权重的训练。将三种混合算法-结合了进化和反向传播学习-与标准反向传播算法进行了比较。结果表明,纯反向传播优于任何混合算法。除了最简单的实现之外,反向传播具有最佳的分类结果和最快的运行时间。

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