2023
DOI: 10.1111/cogs.13290
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Co‐Occurrence, Extension, and Social Salience: The Emergence of Indexicality in an Artificial Language

Abstract: We investigated the emergence of sociolinguistic indexicality using an artificial‐language‐learning paradigm. Sociolinguistic indexicality involves the association of linguistic variants with nonlinguistic social or contextual features. Any linguistic variant can acquire “constellations” of such indexical meanings, though they also exhibit an ordering, with first‐order indices associated with particular speaker groups and higher‐order indices targeting stereotypical attributes of those speakers. Much natural‐l… Show more

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Cited by 3 publications
(4 citation statements)
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“…This is consonant with findings from the phonetic convergence literature showing that people are good imitators (German et al, 2013) and their social attitudes play into what and when they imitate (Pardo et al, 2012). It also aligns with findings from artificial language learning paradigms which indicate that social salience influences the success of picking up and transmitting a linguistic pattern (Li and Roberts, 2023). It remains true that, at least on some level, processing shows very clear top-down influences (Niedzielski, 1999;Hurring et al, 2022).…”
Section: Discussionsupporting
confidence: 86%
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“…This is consonant with findings from the phonetic convergence literature showing that people are good imitators (German et al, 2013) and their social attitudes play into what and when they imitate (Pardo et al, 2012). It also aligns with findings from artificial language learning paradigms which indicate that social salience influences the success of picking up and transmitting a linguistic pattern (Li and Roberts, 2023). It remains true that, at least on some level, processing shows very clear top-down influences (Niedzielski, 1999;Hurring et al, 2022).…”
Section: Discussionsupporting
confidence: 86%
“…One, but not the other, has clear higher-order indices in the language community. The task was similar to Li and Roberts (2023) in exposing participants to patterns with and without higher-order indexicality, to Baer-Henney et al (2015) in using nonce word distributions generated from existing lexical patterns in the participants' native language, and to Lindsay et al (2012) in testing for long-term accommodation. Overall, it was closest to Rácz et al (2020), except that it used two large-scale, productive inflection patterns (instead of the English past tense, which is fragmented and has limited productivity), tested for the role of higher-order indexicality (or sociolinguistic salience) in learning, and looked at long-term accommodation.…”
Section: The Present Studymentioning
confidence: 99%
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“…Interestingly, the above advancements in contemporary linguistic anthropology and sociolinguistics have progressed more or less in parallel with notable developments in psychology and neuroscience over the past two decades, in which the situational, sociocultural, and reflective facets of human cognition have increasingly become a research focus in experimental cognitive research (Christiansen & Chater, 2015, 2022; Decety & Wheatley, 2015; Forgas et al., 2001; Kanske, 2018; Saxe & Baron‐Cohen, 2016; Tomasello, 2003). More recent work in cognitive science has also begun to utilize and evaluate theories about indexicality in particular in cognitive and behavioral experiments (Li & Roberts, 2023). Together, an interdisciplinary collaboration encompassing sociolinguistics, linguistic anthropology, psychology, neuroscience, linguistics, and other allied fields within the cognitive and social sciences spectrum is essential for offering critical theoretical and empirical insights for the current work in language‐related AI modeling.…”
mentioning
confidence: 99%