Abstract
Abstract
Previous evidence has implicated personal relevance as a predictive factor in lexical access. Westbury (2014) showed that personally relevant words were rated as having a higher
subjective familiarity than words that were not personally relevant, suggesting that personally relevant words are processed more
fluently than less personally relevant words. Here we extend this work by defining a measure of personal relevance that does not
rely on human judgments but is rather derived from first-order co-occurrence of words with the first-person singular personal
pronoun, I. We show that words estimated as most personally relevant are recognized more quickly, named faster,
judged as more familiar, and used by infants earlier than words that are less personally relevant. Self-relevance is also a strong
predictor of several measures that are usually measured only by human judgments or their computational estimates, such as
subjective familiarity, age of acquisition, imageability, concreteness, and body-object interaction. We have made all
self-relevance estimates (as well as the raw data and code from our experiments) available at https://osf.io/gdb6h/.
Publisher
John Benjamins Publishing Company
Subject
Cognitive Neuroscience,Linguistics and Language,Language and Linguistics
Cited by
6 articles.
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