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A MATLAB Toolbox for Standardized Reading Speed Assessment: Implementing and Extending the Perrin Sentence Generator for English Corpora

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new Abstract: In the fields of vision science, cognitive psychology, and psycholinguistics, the accurate measurement of reading speed is frequently hampered by the limitations of static reading charts. Repeated testing often leads to memorization effects, while the requirement for oral recitation introduces speech-motor confounds that obscure true information processing speed. To address these methodological hurdles, this paper introduces an open-source MATLAB toolbox that adapts the...

arXiv:2606.06297v1 Announce Type: new Abstract: In the fields of vision science, cognitive psychology, and psycholinguistics, the accurate measurement of reading speed is frequently hampered by the limitations of static reading charts. Repeated testing often leads to memorization effects, while the requirement for oral recitation introduces speech-motor confounds that obscure true information processing speed. To address these methodological hurdles, this paper introduces an open-source MATLAB toolbox that adapts the sentence generation paradigm originally proposed by Perrin, Paill\'e, and Baccino (2014) for the English language. This system utilizes a semantic ontology and a "proto-truth" logic to autonomously generate thousands of unique, grammatically simple sentences with unambiguous truth values. Beyond the original scope of Maximum Reading Speed (MRS) measurement, this implementation introduces band-pass psycholinguistic filtering and specific logic to resolve semantic ambiguities unique to English. We present this complete software package as an open platform for the scientific community to validate and refine.
MATLAB (ORG) Standardized Reading Speed Assessment: Implementing and Extending (ORG) English (ORG) Perrin (ORG) Baccino (PERSON) Maximum Reading Speed (ORG)
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