Mental Lexicon Growth Modelling Reveals the Multiplexity of the English Language

04/05/2016
by   Massimo Stella, et al.
0

In this work we extend previous analyses of linguistic networks by adopting a multi-layer network framework for modelling the human mental lexicon, i.e. an abstract mental repository where words and concepts are stored together with their linguistic patterns. Across a three-layer linguistic multiplex, we model English words as nodes and connect them according to (i) phonological similarities, (ii) synonym relationships and (iii) free word associations. Our main aim is to exploit this multi-layered structure to explore the influence of phonological and semantic relationships on lexicon assembly over time. We propose a model of lexicon growth which is driven by the phonological layer: words are suggested according to different orderings of insertion (e.g. shorter word length, highest frequency, semantic multiplex features) and accepted or rejected subject to constraints. We then measure times of network assembly and compare these to empirical data about the age of acquisition of words. In agreement with empirical studies in psycholinguistics, our results provide quantitative evidence for the hypothesis that word acquisition is driven by features at multiple levels of organisation within language.

READ FULL TEXT
research
09/11/2016

Multiplex lexical networks reveal patterns in early word acquisition in children

Network models of language have provided a way of linking cognitive proc...
research
05/26/2017

Multiplex model of mental lexicon reveals explosive learning in humans

Similarities among words affect language acquisition and processing in a...
research
01/13/2022

Feature-rich multiplex lexical networks reveal mental strategies of early language learning

Knowledge in the human mind exhibits a dualistic vector/network nature. ...
research
10/02/2022

Cognitive modelling with multilayer networks: Insights, advancements and future challenges

The mental lexicon is a complex cognitive system representing informatio...
research
02/07/2021

Word frequency-rank relationship in tagged texts

We analyze the frequency-rank relationship in sub-vocabularies correspon...
research
10/07/2018

Phonology-Augmented Statistical Framework for Machine Transliteration using Limited Linguistic Resources

Transliteration converts words in a source language (e.g., English) into...
research
02/09/2018

Making "fetch" happen: The influence of social and linguistic context on nonstandard word growth and decline

In an online community, new words come and go: today's "haha" may be rep...

Please sign up or login with your details

Forgot password? Click here to reset