Content area

Abstract

People learn language from their social environment. As individuals differ in their social networks, they might be exposed to input with different lexical distributions, and these might influence their linguistic representations and lexical choices. In this article we test the relation between linguistic performance and 3 social network properties that should influence input variability, namely, network size, network heterogeneity, and network density. In particular, we examine how these social network properties influence lexical prediction, lexical access, and lexical use. To do so, in Study 1, participants predicted how people of different ages would name pictures, and in Study 2 participants named the pictures themselves. In both studies, we examined how participants' social network properties related to their performance. In Study 3, we ran simulations on norms we collected to see how age variability in one's network influences the distribution of different names in the input. In all studies, network age heterogeneity influenced performance leading to better prediction, faster response times for difficult-to-name items, and less entropy in input distribution. These results suggest that individual differences in social network properties can influence linguistic behavior. Specifically, they show that having a more heterogeneous network is associated with better performance. These results also show that the same factors influence lexical prediction and lexical production, suggesting the two might be related.

Details

Title
How social network heterogeneity facilitates lexical access and lexical prediction
Author
Lev-Ari, Shiri; Shao, Zeshu
Pages
528-538
Publication year
2017
Publication date
Apr 2017
Publisher
Springer Nature B.V.
ISSN
0090502X
e-ISSN
15325946
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1883089099
Copyright
Copyright Springer Science & Business Media Apr 2017