Sound symbolism in the languages of Australia.

PLoS One

Department of Linguistics, Yale University, New Haven, Connecticut, United States of America.

Published: January 2015

The notion that linguistic forms and meanings are related only by convention and not by any direct relationship between sounds and semantic concepts is a foundational principle of modern linguistics. Though the principle generally holds across the lexicon, systematic exceptions have been identified. These "sound symbolic" forms have been identified in lexical items and linguistic processes in many individual languages. This paper examines sound symbolism in the languages of Australia. We conduct a statistical investigation of the evidence for several common patterns of sound symbolism, using data from a sample of 120 languages. The patterns examined here include the association of meanings denoting "smallness" or "nearness" with front vowels or palatal consonants, and the association of meanings denoting "largeness" or "distance" with back vowels or velar consonants. Our results provide evidence for the expected associations of vowels and consonants with meanings of "smallness" and "proximity" in Australian languages. However, the patterns uncovered in this region are more complicated than predicted. Several sound-meaning relationships are only significant for segments in prominent positions in the word, and the prevailing mapping between vowel quality and magnitude meaning cannot be characterized by a simple link between gradients of magnitude and vowel F2, contrary to the claims of previous studies.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3994004PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0092852PLOS

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