One of the important topics in the research field of Chinese classical poetry is to analyze the poetic style. By examining the relevant works of previous dynasties, researchers judge a poetic style mostly by their subjective feelings, and refer to the previous evaluations that have become a certain conclusion. Although this judgment method is often effective, there may be some errors. This paper builds the most perfect data set of Chinese classical poetry at present, trains a BART-poem pre -trained model on this data set, and puts forward a generally applicable poetry style judgment method based on this BART-poem model, innovatively introduces in-depth learning into the field of computational stylistics, and provides a new research method for the study of classical poetry. This paper attempts to use this method to solve the problem of poetry style identification in the Tang and Song Dynasties, and takes the poetry schools that are considered to have a relatively clear and consistent poetic style, such as the Hongzheng Qizi and Jiajing Qizi, Jiangxi poetic school and Tongguang poetic school, as the research object, and takes the poems of their representative poets for testing. Experiments show that the judgment results of the tested poetry work made by the model are basically consistent with the conclusions given by critics of previous dynasties, verify some avant-garde judgments of Mr. Qian Zhongshu, and better solve the task of poetry style recognition in the Tang and Song dynasties.
翻译:中国古典诗歌研究领域的重要课题之一是分析诗歌风格。通过研究以往王朝的相关作品,研究人员主要根据主观感判断诗歌风格,并参考以前得出一定结论的评价。虽然这种判断方法往往有效,但可能有一些错误。本文构建了目前中国古典诗歌最完美的数据集,在这个数据集上培训了BART-poem预培训模型,并提出了一种基于BART-poem模型的普遍适用的诗歌风格判断方法,创新地将深入学习引入计算风格领域,并为古典诗的研究提供了新的研究方法。本文试图使用这种方法解决唐和宋调的诗歌风格识别问题,并选取了被认为具有相对明确和一致的诗作风格的诗学院,如香港诗歌诗歌诗歌诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗诗歌,作为研究对象之一,并选取了历史诗诗诗诗诗诗诗诗诗诗诗诗诗的典型,通过历史诗诗诗诗诗诗诗诗诗诗诗诗诗作的原,对历史作了进行了一定的检验。