Abstract

Network models of language have provided a way of linking cognitive processes to language structure. However, current approaches focus only on one linguistic relationship at a time, missing the complex multi-relational nature of language. In this work, we overcome this limitation by modelling the mental lexicon of English-speaking toddlers as a multiplex lexical network, i.e. a multi-layered network where N = 529 words/nodes are connected according to four relationship: (i) free association, (ii) feature sharing, (iii) co-occurrence, and (iv) phonological similarity. We investigate the topology of the resulting multiplex and then proceed to evaluate single layers and the full multiplex structure on their ability to predict empirically observed age of acquisition data of English speaking toddlers. We find that the multiplex topology is an important proxy of the cognitive processes of acquisition, capable of capturing emergent lexicon structure. In fact, we show that the multiplex structure is fundamentally more powerful than individual layers in predicting the ordering with which words are acquired. Furthermore, multiplex analysis allows for a quantification of distinct phases of lexical acquisition in early learners: while initially all the multiplex layers contribute to word learning, after about month 23 free associations take the lead in driving word acquisition.

Highlights

  • Language consists of a multi-level mapping of meanings onto words[1,2]

  • We find that the multiplex network can account for developmental trends, offering predictions and interpretability that analysis based on single layer networks or word specific measures such as frequency or length cannot

  • We first construct a multiplex lexical network composed of four layers capturing (i) free associations from the South Florida association norms[24], (ii) feature sharing from the McRae et al dataset[25], (iii) co-occurrence in child-directed speech from the CHILDES dataset[26], and (iv) phonological similarities from WordNet 3.020

Read more

Summary

Introduction

Language consists of a multi-level mapping of meanings onto words[1,2]. In order to communicate, humans must learn how to use linguistic structures to express thoughts as words. How the multiplex organisation of the ML relates to and influences language learning is still poorly understood but new techniques related to multiplex networks[9,10,11,12] allow us to explore patterns of word acquisition within the mental lexicon. We achieve this by constructing an edge-coloured multiplex network[9] based on relational features of phonology, semantics, and syntax. In the last few years multiplex modelling has provided novel insights in areas as diverse as social balance in on-line platforms[29,30], emergence and stability of multiculturalism[31], congestion in transportation networks[28], and ecosystems in ecology[32,33], cf. refs 10 and 12 for a review on multi-layer and multiplex networks

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call