Gender classification in classical fiction: A computational analysis of 1113 fictions.
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| Abstract | :  Recent decades have witnessed the rapid development of literary studies on gender and writing style. One of the common limitations of previous studies is that they analyze only a few texts, which some researchers have already pointed out. In this study, we attempt to find the features that best facilitate the classification of texts by authorial gender. Based on a corpus of 1113 classical fictions from the early 19 century to the early 20 century. Eight algorithms, including SVM, random forest, decision tree, AdaBoost, logistic regression, K-nearest neighbors, gradient boosting and XGBoost, are used to automatically select the features that are most useful for properly categorizing a text. We find that word frequency is the most important predictor for identifying authorial gender in classical fictions, achieving an accuracy rate of 92%. We also find that nationhood is not particularly impactful when dealing with authorial gender differences in classical fictions, as genderlectal variation is 'universal' in the English-speaking world. | 
| Year of Publication | :  2022 | 
| Journal | :  Mathematical biosciences and engineering : MBE | 
| Volume | :  19 | 
| Issue | :  9 | 
| Number of Pages | :  8892-8907 | 
| Date Published | :  2022 | 
| ISSN Number | :  1547-1063 | 
| URL | :  https://www.aimspress.com/article/10.3934/mbe.2022412 | 
| DOI | :  10.3934/mbe.2022412 | 
| Short Title | :  Math Biosci Eng | 
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