论在线社交网络中语言创新的模式化接受

Daniel James Kershaw, Matthew Rowe, Patrick Stacey
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引用次数: 22

摘要

语言的变化和创新在线上和线下的交流中是不断发生的,这使得新词进入了人们的词典,甚至进入了现代词典,最近增加了“e- cigg”和“vape”。然而,识别这些“创新”所需的手工工作既耗时又主观。在这项工作中,我们展示了如何通过已知语言接受模型的操作,结合相对简单的统计测试,在两个不同的OSN(在线社交网络)中识别语言方面的创新。在语言理论的基础上,我们确定了三种可以应用的统计测试——变异;频率,形式和意义。每一个都显示了不同的成功率在两个网络上(地理绑定的Twitter样本和Reddit样本)。这些测试还应用于两个网络内的不同社区水平,允许在两个网络上的不同社区结构中识别不同的创新,例如:识别Twitter的区域差异,以及Subreddits分组的差异,其中确定的示例创新包括“casualidad”和“cym”。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Modelling Language Innovation Acceptance in Online Social Networks
Language change and innovation is constant in online and offline communication, and has led to new words entering people's lexicon and even entering modern day dictionaries, with recent additions of 'e-cig' and 'vape'. However the manual work required to identify these 'innovations' is both time consuming and subjective. In this work we demonstrate how such innovations in language can be identified across two different OSN's (Online Social Networks) through the operationalisation of known language acceptance models that incorporate relatively simple statistical tests. From grounding our work in language theory, we identified three statistical tests that can be applied - variation in; frequency, form and meaning. Each show different success rates across the two networks (Geo-bound Twitter sample and a sample of Reddit). These tests were also applied to different community levels within the two networks allowing for different innovations to be identified across different community structures over the two networks, for instance: identifying regional variation across Twitter, and variation across groupings of Subreddits, where identified example innovations included 'casualidad' and 'cym'.
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