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Nonlinearities in bilingual visual word recognition: An introduction to generalized additive modeling

Koji Miwa, R. Harald Baayen

2021Bilingualism Language and Cognition29 citationsDOI

Abstract

Abstract This paper introduces the generalized additive mixed model (GAMM) and the quantile generalized additive mixed model (QGAMM) through reanalyses of bilinguals’ lexical decision data from Dijkstra et al. (2010) and Miwa et al. (2014). We illustrate how regression splines can be used to test for nonlinear effects of cross-language similarity in form as well as for controlling experimental trial effects. We further illustrate the tensor product smooth for a nonlinear interaction between cross-language semantic similarity and word frequency. Finally, we show how the QGAMM helps clarify whether the effect of a particular predictor is constant across distributions of RTs.

Topics & Concepts

Generalized additive modelAdditive modelConstant (computer programming)Similarity (geometry)Word (group theory)Computer scienceQuantileNonlinear systemArtificial intelligenceNatural language processingMathematicsStatisticsMachine learningImage (mathematics)PhysicsProgramming languageQuantum mechanicsGeometryNeurobiology of Language and BilingualismReading and Literacy DevelopmentNatural Language Processing Techniques
Nonlinearities in bilingual visual word recognition: An introduction to generalized additive modeling | Litcius