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一个浮夸的点心:论世界第三烂笑话的不合理复杂性。

A pompous snack: On the unreasonable complexity of the world's third-worst jokes.

机构信息

University of Alberta.

出版信息

Can J Exp Psychol. 2021 Dec;75(4):327-347. doi: 10.1037/cep0000234. Epub 2021 Mar 25.

Abstract

Although studies of humour are as old as the Western academic tradition, most theories are too vague to allow for modelling and prediction of humour judgments. Previous work in modelling humour judgments has succeeded by focusing on the world's worst jokes: the slight humour of single nonwords (Westbury, Shaoul, Moroschan, & Ramscar, 2016) and single words (Westbury & Hollis, 2019). Here that work is extended to the world's third-worst jokes, adjective-noun pairs such as . Participants used best-worst scaling to rate the humour of random word pairs. Those judgments were modelled using both linear regression and genetic programming, which is not constrained by assumptions of linearity. The linear regression models were as successful as the nonlinear models at predicting humour judgments, accounting for 27% of the variance in a 540-item validation set. Predictors associated only with the noun and with the relationship between the adjective and noun accounted for much more variance (over 14% each) than predictors associated only with the adjective (6.3%). Greater cosine distance of the adjective word2vec vector from the vectors of the shared neighbors of the noun and adjective is associated with higher humour ratings, whereas the opposite relationship is true for the noun. This captures a form of incongruity not seen in single items, by which neighbours of the adjective become unexpectedly relevant only when the noun brings them into focus. (PsycInfo Database Record (c) 2021 APA, all rights reserved).

摘要

尽管幽默研究的历史可以追溯到西方学术传统的起源,但大多数理论都过于模糊,无法对幽默判断进行建模和预测。之前在幽默判断建模方面的工作取得了成功,其重点是世界上最糟糕的笑话:单个非单词(Westbury、Shaoul、Moroschan 和 Ramscar,2016)和单个单词(Westbury 和 Hollis,2019)的轻微幽默。在此,将该工作扩展到世界上第三糟糕的笑话,即形容词-名词对,如。参与者使用最佳最差标度来对随机单词对的幽默进行评分。使用线性回归和遗传编程对这些判断进行建模,遗传编程不受线性假设的限制。线性回归模型在预测幽默判断方面与非线性模型一样成功,在 540 个验证项目的集合中解释了 27%的方差。与仅与形容词相关的预测器相比,仅与名词相关的预测器以及与形容词和名词之间的关系相关的预测器分别解释了更多的方差(每个超过 14%),而仅与形容词相关的预测器解释了更少的方差(6.3%)。形容词 word2vec 向量与名词和形容词共享邻居向量之间的余弦距离越大,幽默评分越高,而名词的情况则相反。这捕获了一种在单个项目中看不到的不和谐形式,即只有当名词将形容词带入焦点时,形容词的邻居才会变得出乎意料地相关。(PsycInfo 数据库记录(c)2021 APA,保留所有权利)。

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