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A Bayesian Mixed Effects Model of Literary Character

机译:文学人物的贝叶斯混合效果模型

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We consider the problem of automatically inferring latent character types in a collection of 15,099 English novels published between 1700 and 1899. Unlike prior work in which character types are assumed responsible for probabilistically generating all text associated with a character, we introduce a model that employs multiple effects to account for the influence of extra-linguistic information (such as author). In an empirical evaluation, we find that this method leads to improved agreement with the preregistered judgments of a literary scholar, complementing the results of alternative models.
机译:我们考虑在1700和1899年之间发布的15,099名英语小说中自动推断潜在角色类型的问题。与现有工作不同,其中假设具有概率地生成与角色相关联的所有文本的字符类型,我们介绍了一种使用多个的模型效果解释了语言信息的影响(如作者)。在一个实证评估中,我们发现这种方法导致与文学学者的预期判断改进,补充了替代模型的结果。

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