Litcius/Paper detail

On the benefits of structural equation modeling for corpus linguists

Tove Larsson, Luke Plonsky, Gregory R. Hancock

2020Corpus Linguistics and Linguistic Theory35 citationsDOIOpen Access PDF

Abstract

Abstract The present article aims to introduce structural equation modeling, in particular measured variable path models, and discuss their great potential for corpus linguists. Compared to other techniques commonly employed in the field such as multiple regression, path models are highly flexible and enable testing a priori hypotheses about causal relations between multiple independent and dependent variables. In addition to increased methodological versatility, this technique encourages big-picture, model-based reasoning, thus allowing corpus linguists to move away from the, at times, somewhat overly simplified mindset brought about by the more narrow null-hypothesis significance testing paradigm. The article also includes commentary on corpus linguistics and its trajectory, arguing in favor of increased cumulative knowledge building.

Topics & Concepts

Structural equation modelingMindsetComputer scienceField (mathematics)A priori and a posterioriPath (computing)Variable (mathematics)Artificial intelligencePath analysis (statistics)Causal modelNatural language processingEpistemologyMachine learningMathematicsStatisticsPhilosophyProgramming languagePure mathematicsMathematical analysisNatural Language Processing TechniquesDiscourse Analysis in Language StudiesSecond Language Acquisition and Learning