Litcius/Paper detail

Testing the Relationship between Word Length, Frequency, and Predictability Based on the German Reference Corpus

Alexander Koplenig, Marc Kupietz, Sascha Wolfer

2022Cognitive Science17 citationsDOI

Abstract

In a recent article, Meylan and Griffiths (Meylan & Griffiths, 2021, henceforth, M&G) focus their attention on the significant methodological challenges that can arise when using large-scale linguistic corpora. To this end, M&G revisit a well-known result of Piantadosi, Tily, and Gibson (2011, henceforth, PT&G) who argue that average information content is a better predictor of word length than word frequency. We applaud M&G who conducted a very important study that should be read by any researcher interested in working with large-scale corpora. The fact that M&G mostly failed to find clear evidence in favor of PT&G's main finding motivated us to test PT&G's idea on a subset of the largest archive of German language texts designed for linguistic research, the German Reference Corpus consisting of ∼43 billion words. We only find very little support for the primary data point reported by PT&G.

Topics & Concepts

GermanPredictabilityWord (group theory)LinguisticsWord lists by frequencyComputer sciencePoint (geometry)Focus (optics)Scale (ratio)Corpus linguisticsNatural language processingTest (biology)Artificial intelligenceMathematicsStatisticsSentenceGeographyPhilosophyGeometryPaleontologyPhysicsCartographyOpticsBiologyNatural Language Processing TechniquesAuthorship Attribution and ProfilingTopic Modeling