JOURNAL ARTICLE
Phonological parsing via an integrated I-language: The emergence of property-by-property transfer effects in L3 phonology.
Published In: Linguistic Approaches to Bilingualism, 2023, v. 13, n. 6. P. 743 1 of 3
Database: Communication Source 2 of 3
Authored By: Archibald, John 3 of 3
Abstract
Schwartz and Sprouse (2021) argue against property-by-property Transfer (Westergaard, 2021a, b) and for wholesale transfer (Rothman, 2015) into a third language grammar by questioning the cognitive plausibility of "extracting a proper subpart from the ... grammar and using that proper sub-system as the basis for a new cognitive state." I will argue that the insights from the approaches of López (2020); Lightfoot (2020); Dresher (2018), and Westergaard (2021a) when applied to empirical data from L3 English data from L1 Arabic/L2 French speakers, give us reason to question Schwartz and Sprouse's defence of wholesale transfer, and its typological underpinnings. We can set the study of L3A in a larger context which can unify domains such as the acquisition of phonology and syntax via a unified approach to parsing. By invoking an underspecified, minimal UG, primary linguistic data, and domain-general third factors which act in concert to parse the E-language to select structures, we can capture the underlying similarity of first, second, and third language acquisition. Parsing proceeds in an error-driven fashion, structure by structure, drawing on the Integrated I-language and UG options found in a Repository. In essence, this approach renders the wholesale/property-by-property distinction a false dichotomy. [ABSTRACT FROM AUTHOR]
Additional Information
- Source:Linguistic Approaches to Bilingualism. 2023/11, Vol. 13, Issue 6, p743
- Document Type:Article
- Subject Area:Language and Linguistics
- Publication Date:2023
- ISSN:1879-9264
- DOI:10.1075/lab.21017.arc
- Accession Number:173806859
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