Tang Chang’an poetry automatic classification: a practical application of deep learning methods

IF 0.7 3区 文学 0 HUMANITIES, MULTIDISCIPLINARY Digital Scholarship in the Humanities Pub Date : 2024-04-04 DOI:10.1093/llc/fqae014
Meng-Yu Tian, Qi Jia, Cong Wang, Juwang Yang, Xin Liu
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Abstract

As the capital of Tang Dynasty, Chang’an was one of the most prosperous cities in the world at that time and had a profound influence on Tang poetry. Poets described Chang’an to illustrate the cultural features of the Tang Dynasty while also invoking emotions in readers. The study of Tang Chang’an poetry has important literary and historical value. In order to understand the interpretation and emotional expression of Tang Chang’an poetry more conveniently and clearly, we conducted a study using deep learning to classify Chang’an poetry into four classes: imperially assigned poetry (应制), emotional poetry (感怀), parting poetry (离别), and other poetry (其他). We suggested a comprehensive framework of text classification based on deep learning, including a text input module, feature encoder module, and classification module. We applied several mainstream deep neural network structures to extract features in different ways, which comprised convolutional neural network (CNN), Fasttext, bi-direction long-short-term memory network, and Attention mechanism. Based on our experimental findings, the CNN-based method achieved the best performance for the task. Our inference was that, in Chinese ancient poetry, the analysis of semantic content is more facilitated by local textual features rather than contextual features. We combined this inference with the theory of image in Chinese ancient poetry to analyze the suitability of the deep learning techniques for the study of Chinese ancient poetry.
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唐长安诗歌自动分类:深度学习方法的实际应用
作为唐朝的首都,长安是当时世界上最繁华的城市之一,对唐诗产生了深远的影响。诗人通过描写长安来展现唐朝的文化特色,同时也唤起读者的情感共鸣。研究唐代长安诗歌具有重要的文学史价值。为了更方便、更清晰地理解唐长安诗歌的解读和情感表达,我们利用深度学习将长安诗歌分为四类:应制诗、感怀诗、离别诗和其他诗歌。我们提出了基于深度学习的文本分类综合框架,包括文本输入模块、特征编码模块和分类模块。我们应用了几种主流的深度神经网络结构,包括卷积神经网络(CNN)、Fasttext、双向长短期记忆网络和注意力机制,以不同的方式提取特征。根据我们的实验结果,基于 CNN 的方法在任务中取得了最佳性能。我们的推论是,在中国古诗词中,局部文本特征比上下文特征更有利于语义内容的分析。我们将这一推论与中国古代诗歌的图像理论相结合,分析了深度学习技术在中国古代诗歌研究中的适用性。
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来源期刊
CiteScore
1.80
自引率
25.00%
发文量
78
期刊介绍: DSH or Digital Scholarship in the Humanities is an international, peer reviewed journal which publishes original contributions on all aspects of digital scholarship in the Humanities including, but not limited to, the field of what is currently called the Digital Humanities. Long and short papers report on theoretical, methodological, experimental, and applied research and include results of research projects, descriptions and evaluations of tools, techniques, and methodologies, and reports on work in progress. DSH also publishes reviews of books and resources. Digital Scholarship in the Humanities was previously known as Literary and Linguistic Computing.
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