计算机科学
差异(会计)
眼动
人工智能
统计假设检验
机器学习
广义线性混合模型
变量(数学)
点(几何)
混合模型
统计
数学
数学分析
几何学
会计
业务
作者
Breno Silva,David Orrego-Carmona,Agnieszka Szarkowska
出处
期刊:Translation spaces
[John Benjamins Publishing Company]
日期:2022-06-14
卷期号:11 (1): 60-88
被引量:7
摘要
Abstract In this paper, we aim to promote the use of linear mixed models (LMMs) in eye-tracking research on subtitling. Using eye tracking to study viewers’ reading of subtitles often warrants controlling for many confounding variables. However, even assuming that these variables are known to researchers, such control may not be possible or desired. Traditional statistical methods such as t -tests or ANOVAs exacerbate the problem due to the use of aggregated data: each participant has one data point per dependent variable. As a solution, we propose the use of LMMs, which are better suited to account for a number of subtitle and participant characteristics, thus explaining more variance. We introduce essential theoretical aspects of LMMs and highlight some of their advantages over traditional statistical methods. To illustrate our point, we compare two analyses of the same dataset: one using a t -test; another using LMMs.
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