Simulation of Chinese characters learning with improved multi-SOM network
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摘要: 為了模擬漢語初學者的漢字認知過程,在Kohonen神經網絡的基礎上,改進了其網絡結構和算法,并且將改進后的網絡輸出層根據Hebbian學習規則連接,構建了一個多Kohonen網絡協同工作的漢字認知自組織神經網絡模型.模擬研究結果表明,模型能夠成功地學習到漢字的結構類型,且能有效識別出漢字的部件,在一定程度上模擬了漢字認知的部分過程,說明該模型用于漢字認知乃至漢語言習得的可行性.Abstract: In order to simulate the Chinese character acquisition process, this paper set up a multilayer selforganizing maps (SOM) network model based on improved Kohonen network. The model's output maps, which adapt modified algorithm and expand neuron's neighborhood, were connected via associative links updated by Hebbian learning. After training the model could learn Chinese character architecture successfully and also do well in Chinese character component recognition. The simulation results demonstrated that the feasibility of further research in Chinese character acquisition and even Chinese language learning with this model was possible.
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