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A new way to identify if variation in children’s input could be developmentally meaningful: Using computational cognitive modeling to assess input across socio-economic status for syntactic islands

Published online by Cambridge University Press:  24 November 2022

Lisa PEARL*
Affiliation:
University of California, Irvine, USA
Alandi BATES*
Affiliation:
University of California, Irvine, USA
*
Corresponding author. E-mails: lpearl@uci.edu, ajbates@uci.edu
Corresponding author. E-mails: lpearl@uci.edu, ajbates@uci.edu
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Abstract

While there are always differences in children’s input, it is unclear how often these differences impact language development – that is, are developmentally meaningful – and why they do (or do not) do so. We describe a new approach using computational cognitive modeling that links children’s input to predicted language development outcomes, and can identify if input differences are potentially developmentally meaningful. We use this approach to investigate if there is developmentally-meaningful input variation across socio-economic status (SES) with respect to the complex syntactic knowledge called syntactic islands. We focus on four island types with available data about the target linguistic behavior. Despite several measurable input differences for syntactic island input across SES, our model predicts this variation not to be developmentally meaningful: it predicts no differences in the syntactic island knowledge that can be learned from that input. We discuss implications for language development variability across SES.

Information

Type
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), 2022. Published by Cambridge University Press
Figure 0

Figure 1. Higher-SES adult acceptability judgments from Sprouse et al. (2012), showing means and standard deviations of adult judgments. These judgments are interpreted as demonstrating implicit knowledge of four syntactic islands via a superadditive interaction of acceptability judgments for the selected wh-dependencies that cross dependency length (matrix vs. embedded) with the absence/presence of an island structure (non-island structure vs. island structure) in a 2 x 2 factorial design

Figure 1

Figure 2. Higher-SES child judgments generated from the computational cognitive model in Pearl and Sprouse (2013). These generated judgements can be interpreted as demonstrating implicit knowledge of four syntactic islands via a superadditive interaction of acceptability judgments for the selected wh-dependencies that cross dependency length (matrix vs. embedded) with the absence/presence of an island structure (non-island structure vs. island structure) in a 2 x 2 factorial design. Log probabilities correspond to acceptability judgments, with log probabilities closer to 0 indicating higher acceptability

Figure 2

Table 1. Syntactic paths for experimental stimuli that the modeled learner can generate acceptability judgments for, in a 2x2 factorial design varying dependency length (matrix vs. embedded) and absence/presence of an island structure (non-island vs. island). Island-spanning dependencies are indicated with a *

Figure 3

Table 2. Wh-dependencies and syntactic trigrams unique to speech samples directed at higher-SES and lower-SES children, respectively. Unique syntactic trigrams are on the same row as the unique wh-dependencies they come from

Figure 4

Table 3. Calculating the total hours (cumulative waking hrs) and minutes (cumulative waking mins) awake for children between the ages of 20 and 59 months, the estimated learning period for syntactic islands. These calculations are based on waking hours per day (waking) and total waking hours. Cumulative hours awake are shown at age one (20-23 months), two (24-35 months), three (36-47 months), and four (48-59 months).

Figure 5

Table 4. Calculating the range of total wh-dependencies (total wh-dep) that higher-SES and lower-SES children encounter between the ages of 20 and 59 months, the estimated learning period for syntactic islands. These calculations are based on 850,450.2 waking minutes between these ages, estimated ranges of utterance rates per min (utt/min), based on average rates (average) and standard deviations (s.d.) across SES, and wh-dependencies in the input (wh-dep/utt) across SES.

Figure 6

Figure 3. Predicted four-year-old child judgments for Complex NP stimuli by a modeled learner learning from higher-SES (left) and lower-SES (right) input data ranges: 2 standard deviations below average (-2sd), 1 standard deviation below average (-1sd), average (avg), 1 standard deviation above average (+1sd), 2 standard deviations above average (+2sd). Averages are shown from 1000 modeled learner runs per input range. Both interaction plots show the superadditive pattern that appears in adult judgments of these wh-dependencies, given the factorial design crossing dependency distance (matrix vs. embedded) with the absence/presence of an island structure in the utterance (non vs. island)

Figure 7

Figure 4. Predicted four-year-old child judgments for Subject, Whether, and Adjunct stimuli by a modeled learner learning from higher-SES (left column) and lower-SES (right column) input data ranges – 2 standard deviations below average (-2sd), 1 standard deviation below average (-1sd), average (avg), 1 standard deviation above average (+1sd), 2 standard deviations above average (+2sd). Averages are shown from 1000 modeled learner runs per input range. All interaction plots show the superadditive pattern that appears in adult judgments of these wh-dependencies, given the factorial design crossing dependency distance (matrix vs. embedded) with the absence/presence of an island structure in the utterance (non vs. island)