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qiaofei32 / dnn-lstm-word-segment

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Chinese Word Segmention Base on the Deep Learning and LSTM Neural Network

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dnn-lstm-word-segment

Chinese Word Segmention Base on the Deep Learning and LSTM Neural Network

How To Use

You need to download some resources and extract it in the folder.

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