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The development of postverbal subjects in L2 Italian: A multifactorial corpus analysis

Published online by Cambridge University Press:  14 February 2024

Andrea Listanti*
Affiliation:
University of Cologne, Cologne, Germany
Jacopo Torregrossa
Affiliation:
University of Frankfurt, Frankfurt am Main, Germany
*
Corresponding author: Andrea Listanti; Email: andrea.listanti@gmail.com
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Abstract

Most studies on the acquisition of postverbal subjects (VS) in L2 Italian focus on a limited number of linguistic factors that tend to be associated with the production of VS in L1 (e.g., verb class and subject discourse status). Moreover, they analyze homogeneous groups of learners in terms of proficiency, mostly through controlled experiments. In this paper, we present a cross-sectional corpus study based on a multifactorial analysis of the L2 use of VS structures in semi-spontaneous speech. We analyze the production of VSs by learners of different levels of proficiency (A1-C2), considering linguistic factors that trigger the production of VS in L1, but have been unaccounted for in L2 studies (e.g., agentivity of the subject, syntactic configuration of the sentence, contrastive focus). We use a cumulative link mixed model to show how the features of verbs and subjects in VS structures change across proficiency levels. The results indicate learners’ progressive mastery of the mechanisms of assignment of the subject function to the postverbal constituent and increasing sensitivity to contrastive focus as a feature relevant for the use of VS. Furthermore, we observe that psychological verbs associated with the use of VS are produced from the earliest stages of L2 acquisition.

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Type
Original Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press
Figure 0

Table 1. Overview of the predictions of the study

Figure 1

Table 2. Total number of speakers, transcripts, units, VS occurrences, percentage of VSs on the total number of units, and mean number of VSs produced by each learner for each proficiency level

Figure 2

Figure 1. Distribution of VS structures (in percentage) across verb classes (piacere-type, copular, unaccusative, unergative, transitive) across the proficiency levels A1 and A2. Percentages are calculated with respect to the total number of VSs produced at each proficiency level.

Figure 3

Table 3. Parameters of the cumulative link mixed model with the learners’ proficiency levels as outcome variable and the features associated with VS structures (verb class, verb dynamicity, verb frequency, information status of the subject based on the lexical and referential level, contrastivity, subject-verb agreement errors, agentivity, syntactic configuration, clause type, complexity of the subject constituent) as predictors. The predictors, their estimates, standard errors (SE), and z- and p-values are given

Figure 4

Figure 2. Predicted probabilities for VSs to be classified at a certain proficiency level (from B1 to C2) across verb classes (copular, piacere-type, unaccusative, unergative, transitive). The predicted probabilities refer to the model described in footnote 7. The figure has been realized by using the effects package (Fox & Hong, 2009), based on the lattice library (Sarkar, 2008).

Figure 5

Figure 3. Predicted probabilities for VSs to be classified at a certain proficiency level (from B1 to C2) based on the contrastivity of the subject (0 = non-contrastive; 1 = contrastive). The predicted probabilities refer to the model described in footnote 7. The figure has been realized by using the effects package (Fox & Hong, 2009), based on the lattice library (Sarkar, 2008).

Figure 6

Table 4. Overview of the results of the study as related to the predictions of Table 1 (see the section “The study”)

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