Affiliation:
1. University of Tübingen
2. University of Bristol
3. University of Edinburgh
Abstract
Abstract
Thul et al. (2020) called attention to problems that arise when chronometric
experiments implementing specific factorial designs are analysed with the generalized additive mixed model (GAMM), using factor smooths to
capture trial-to-trial dependencies. From a series of simulations incorporating such dependencies, they conclude that GAMMs are
inappropriate for between-subject designs. They argue that in addition GAMMs come with too many modeling possibilities, and advise using the
linear mixed model (LMM) instead. As clarified by the title of their paper, their conclusion is: “Using GAMMs to model trial-by-trial
fluctuations in experimental data: More risks but hardly any benefit”.
We address the questions raised by Thul et al. (2020), who clearly demonstrated
that problems can indeed arise when using factor smooths in combination with factorial designs. We show that the problem does not arise when
using by-smooths. Furthermore, we have traced a bug in the implementation of factor smooths in the mgcv package, which will
have been removed from version 1.8–36 onwards.
To illustrate that GAMMs now produce correct estimates, we report simulation studies implementing different by-subject
longitudinal effects. The maximal LMM emerges as slightly conservative compared to GAMMs, and GAMMs provide estimated coefficients that can
be less variable across simulation runs. We also discuss two datasets where time-varying effects interact with numerical predictors in a
theoretically informative way.
Publisher
John Benjamins Publishing Company
Subject
Cognitive Neuroscience,Linguistics and Language,Language and Linguistics
Reference24 articles.
1. The directed compound graph of English. an exploration of lexical connectivity and its processing consequences;Baayen,2010
2. Autocorrelated errors in experimental data in the language sciences: Some solutions offered by generalized additive mixed models;Baayen,2017
3. The cave of shadows: Addressing the human factor with generalized additive mixed models
4. Random effects structure for confirmatory hypothesis testing: Keep it maximal
5. Parsimonious mixed models;Bates;arXiv.org,2015
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献