The Perceptual Disfluency Effect: A Drift Diffusion and Ex-Gaussian Analysis

Disfluency
LDT
DDM
ex-Gaussian
Distributional analyses
Word recognition

Geller, J., Gomez, P., Buchanon, E., & Makowski, D. (2025).The Perceptual Disfluency Effect: A Drift Diffusion and Ex-Gaussian Analysis. https://osf.io/preprints/psyarxiv/sae23_v3

Authors
Affiliations

Jason Geller

Boston College

Pablo Gomez

Skidmore College

Erin Buchanan

Harrisburg University of Science and Technology

Dominique Makowski

University of Sussex

Published

June 2025

Doi

Abstract

Perceptual disfluency, induced by blurring or difficult-to-read typefaces, can sometimes enhance memory retention, but the underlying mechanisms remain unclear. To investigate this effect, we manipulated blurring levels (clear, low blur, high blur) during encoding and assessed recognition performance in a surprise memory test. In Experiments 1A and 1B, response latencies from a lexical decision task were analyzed using ex-Gaussian distribution modeling and drift diffusion modeling. Results showed that blurring differentially influenced parameters of the model, with high blur affecting both early and late-stage processes, while low blur primarily influenced early-stage processes. Recognition test results further revealed that high blur words were remembered better than both clear and low blurred words. Experiment 2 employed a semantic categorization task with word frequency manipulation to further examine the locus of the perceptual disfluency effect. Similar to Experiments 1A and 1B, high blur influenced both early and late-stage processes, while low blur primarily affected early-stage processes. Low-frequency words exhibited greater shifting and skewing in distributional parameters, yet only high-frequency, highly blurred words demonstrated an enhanced memory effect. These findings suggest that both early and late cognitive processes contribute to the mnemonic benefits associated with perceptual disfluency. Overall, this study demonstrates that distributional and computational analyses provide powerful tools for dissecting encoding mechanisms and their effects on memory, offering valuable insights into models of perceptual disfluency.