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Sentiment analysis based on transfer learning for Chinese ancient literature

机译:基于迁移学习的中国古代文学情感分析

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With the rise of computational social science, analyzing sociological problems using computational methods has attracted widespread attention. In recent years, sentiment analysis has become a research hotspot in computational social science. But existing researches concentrate on modern text, such as product reviews and microblogging, and hardly involve the analysis of ancient literature. In this paper, we propose a model TL-PCO based on transfer learning to classify ancient literature, then through sentiments in ancient literature we can understand social and cultural development in that era. Our model utilizes the knowledge of ancient literature itself and the corresponding modern translation. Through two proposed functions based on transfer learning we can get two kinds of features. With the addition of features from ancient literature itself, three classifiers can be trained and then vote for the final category. Experiments demonstrate the effectiveness of the proposed method on the dataset of Chinese poems in Tang Dynasty. Moreover, the different periods of Tang Dynasty and different genres are analyzed in detail. Compared with the analysis of social history, the results confirmed the effectiveness of this method.
机译:随着计算社会科学的兴起,使用计算方法分析社会学问题已引起广泛关注。近年来,情感分析已成为计算社会科学的研究热点。但是现有的研究集中在现代文本上,例如产品评论和微博,并且几乎不涉及对古代文学的分析。在本文中,我们提出了一种基于转移学习的TL-PCO模型,对古代文学进行分类,然后通过古代文学中的情感,我们可以了解那个时代的社会和文化发展。我们的模型利用了古代文学本身的知识以及相应的现代翻译。通过基于迁移学习提出的两个功能,我们可以获得两种功能。加上古代文学本身的功能,可以训练三个分类器,然后投票给最终分类。实验证明了该方法对唐代中国诗词集的有效性。此外,详细分析了唐朝的不同时期和不同体裁。与社会历史分析相比,结果证实了该方法的有效性。

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