Title
Universal Features in Phonological Neighbor Networks.
Abstract
Human speech perception involves transforming a countinuous acoustic signal into discrete linguistically meaningful units (phonemes) while simultaneously causing a listener to activate words that are similar to the spoken utterance and to each other. The Neighborhood Activation Model posits that phonological neighbors (two forms [words] that differ by one phoneme) compete significantly for recognition as a spoken word is heard. This definition of phonological similarity can be extended to an entire corpus of forms to produce a phonological neighbor network (PNN). We study PNNs for five languages: English, Spanish, French, Dutch, and German. Consistent with previous work, we find that the PNNs share a consistent set of topological features. Using an approach that generates random lexicons with increasing levels of phonological realism, we show that even random forms with minimal relationship to any real language, combined with only the empirical distribution of language-specific phonological form lengths, are sufficient to produce the topological properties observed in the real language PNNs. The resulting pseudo-PNNs are insensitive to the level of lingustic realism in the random lexicons but quite sensitive to the shape of the form length distribution. We therefore conclude that universal features seen across multiple languages are really string universals, not language universals, and arise primarily due to limitations in the kinds of networks generated by the one-step neighbor definition. Taken together, our results indicate that caution is warranted when linking the dynamics of human spoken word recognition to the topological properties of PNNs, and that the investigation of alternative similarity metrics for phonological forms should be a priority.
Year
DOI
Venue
2018
10.3390/e20070526
ENTROPY
Keywords
Field
DocType
networks,neighborhood activation model,phonology,phonological neighbor network
Problem of universals,Empirical distribution function,Spoken word,Of the form,Linguistic universal,Utterance,Artificial intelligence,Natural language processing,Speech perception,Statistics,Mathematics,German
Journal
Volume
Issue
ISSN
20
7
1099-4300
Citations 
PageRank 
References 
0
0.34
7
Authors
7
Name
Order
Citations
PageRank
Kevin S. Brown100.34
paul d allopenna221.87
William R. Hunt300.34
Rachael Steiner400.34
Elliot Saltzman510414.88
Ken McRae6141.52
James S. Magnuson71510.54