Abstract

It is generally believed that when a linguistic item acquires a new meaning, its overall frequency of use rises with time with an S-shaped growth curve. Yet, this claim has only been supported by a limited number of case studies. In this paper, we provide the first corpus-based large-scale confirmation of the S-curve in language change. Moreover, we uncover another generic pattern, a latency phase preceding the S-growth, during which the frequency remains close to constant. We propose a usage-based model which predicts both phases, the latency and the S-growth. The driving mechanism is a random walk in the space of frequency of use. The underlying deterministic dynamics highlights the role of a control parameter which tunes the system at the vicinity of a saddle-node bifurcation. In the neighbourhood of the critical point, the latency phase corresponds to the diffusion time over the critical region, and the S-growth to the fast convergence that follows. The durations of the two phases are computed as specific first-passage times, leading to distributions that fit well the ones extracted from our dataset. We argue that our results are not specific to the studied corpus, but apply to semantic change in general.

Highlights

  • Language can be approached through three different, complementary perspectives

  • We focus on a cognitive approach of linguistic change, more precisely of semantic expansion

  • To account for the specific frequency pattern evidenced by our data analysis, we propose a scenario focusing on cognitive aspects of language use, leaving all sociolinguistic effects backgrounded by making use of a representative agent, mean-field type, approach

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Summary

Introduction

Language can be approached through three different, complementary perspectives. it exists in the mind of. Ghanbarnejad et al [21] investigated 30 instances of language change: 10 regarding the regularization of tense in English verbs (e.g. cleave, clove, cloven > cleave, cleaved, cleaved), 12 relating to the transliteration of Russian names in English (e.g. Stroganoff > Stroganov) and eight to spelling changes in German words (ss > ß > ss) following two different ortographic reforms (in 1901 and 1996) They showed that the S-curve is not universal and that, in some cases, the trajectory of change rather obeys an exponential. This statistical survey allows to obtain statistical distributions for the relevant quantities describing the S-curve pattern (the rate, width and length of the preceding latency part) Apart from this data foraging, we provide a usage-based model of the process of semantic expansion, implementing basic cognitive hypotheses regarding language use. It predicts that the statistical distributions for the latency time and for the growth time should be of the same family as the inverse Gaussian distribution, a claim which is in line with our data survey

Quantifying change from corpus data
À condition que
A cognitive scenario
Model formalism
XX X Y x
Analysis: bifurcation and latency time
Model simulations
Confrontation with corpus data
Discussion
Corpus data
Measuring frequencies
Sigmoids
Findings
Latency period
Full Text
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