A Machine Learning Model for the Dating of Ancient Chinese Texts

Xuejin Yu, W. Huangfu
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引用次数: 2

Abstract

This paper, with the intent of solving the issues on the dating of ancient Chinese texts, takes advantage of the Long-Short Term Memory Network (LSTM) to analyze and process the character sequence in ancient Chinese. In this model, each character is transformed into a high-dimensional vector, and then vectors and the non-linear relationships among them are read and analyzed by LSTM, which finally achieve the dating tags. Experimental results show that the LSTM has a strong ability to date the ancient texts, and the precision reaches about 95% in our experiments. Thus, the proposed model offers an effective method on how to date the ancient Chinese texts. It also inspires us to actively improve the time-consuming analysis tasks in the Chinese NLP field.
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中国古代文献年代测定的机器学习模型
本文利用长短期记忆网络(LSTM)对古汉语汉字序列进行分析和处理,旨在解决古汉语文本的年代测定问题。在该模型中,将每个字符转换成一个高维向量,然后通过LSTM对向量及其之间的非线性关系进行读取和分析,最终实现日期标记。实验结果表明,LSTM具有较强的古文本定年能力,在我们的实验中准确率达到95%左右。因此,该模型为中国古代文献的年代确定提供了一种有效的方法。这也激励我们积极改进中国NLP领域耗时的分析任务。
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