Revolution of Shakespearean Plays' Genre Research: Exploring New Avenues through Machine Learning and Shapley Value Analysis

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Abstract

In the realm of literary research, the challenges of being confined to narrow niches and disconnected from broader contexts have been long-standing. In response, the integration of digital research methods into literary studies has emerged as a compelling area of exploration. Among the classic subjects of literary research, the classification of Shakespearean drama genres holds particular significance. In this paper, we present a case study focused on introducing a promising predictive and analytical method, which leverages Linear Discriminant Analysis (LDA) and the Shapley value. Our methodology begins by employing decision trees to reduce the dimensionality of textual data. Subsequently, a LDA based on Bayesian optimization algorithm is applied to predict the genres of texts. Finally, we utilize the Shapley value to analyze the important words within the texts and unveil their profound literary associations with respective genres. By adopting this approach, our research contributes to the widespread adoption and digital transformation of literary studies, thereby pioneering new avenues in Shakespearean drama research.
莎士比亚戏剧类型研究的革命:通过机器学习和沙普利价值分析探索新的途径
在文学研究领域,长期以来一直面临着局限于狭窄的领域和与更广泛的背景脱节的挑战。作为回应,将数字研究方法整合到文学研究中已经成为一个引人注目的探索领域。在文学研究的经典课题中,莎士比亚戏剧类型的分类具有特殊的意义。在本文中,我们提出了一个案例研究,重点介绍了一种有前途的预测和分析方法,该方法利用线性判别分析(LDA)和Shapley值。我们的方法首先采用决策树来降低文本数据的维数。随后,应用基于贝叶斯优化算法的LDA对文本类型进行预测。最后,我们运用Shapley值分析了文本中的重要词汇,揭示了它们与各自体裁之间的深刻文学联系。通过采用这种方法,我们的研究有助于文学研究的广泛采用和数字化转型,从而开拓了莎士比亚戏剧研究的新途径。
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