Unsupervised learning of vowel categories from infant-directed speech

  1. Gautam K. Vallabha*,
  2. James L. McClelland*,,
  3. Ferran Pons,
  4. Janet F. Werker, and
  5. Shigeaki Amano§
  1. *Department of Psychology, Stanford University, Jordan Hall Building 420, Stanford, CA 94305;
  2. Department of Psychology, University of British Columbia, 2136 West Mall, Vancouver, BC, Canada V6T 1Z4; and
  3. §NTT Communication Science Laboratories, NTT Corporation, 2-4 Hikari-dai, Seika-cho, Souraku-gun, Kyoto 6190237, Japan
  1. Contributed by James L. McClelland, June 16, 2007 (received for review January 29, 2007)

Abstract

Infants rapidly learn the sound categories of their native language, even though they do not receive explicit or focused training. Recent research suggests that this learning is due to infants' sensitivity to the distribution of speech sounds and that infant-directed speech contains the distributional information needed to form native-language vowel categories. An algorithm, based on Expectation–Maximization, is presented here for learning the categories from a sequence of vowel tokens without (i) receiving any category information with each vowel token, (ii) knowing in advance the number of categories to learn, or (iii) having access to the entire data ensemble. When exposed to vowel tokens drawn from either English or Japanese infant-directed speech, the algorithm successfully discovered the language-specific vowel categories (/i, i, ε, e/ for English, /i, iː, e, eː/ for Japanese). A nonparametric version of the algorithm, closely related to neural network models based on topographic representation and competitive Hebbian learning, also was able to discover the vowel categories, albeit somewhat less reliably. These results reinforce the proposal that native-language speech categories are acquired through distributional learning and that such learning may be instantiated in a biologically plausible manner.

Footnotes

  • To whom correspondence should be addressed. E-mail: mcclelland{at}stanford.edu
  • Author contributions: G.K.V. and J.L.M. designed research; G.K.V. performed research; F.P., J.F.W., and S.A. contributed new reagents/analytic tools; F.P., J.F.W., and S.A. analyzed data; and G.K.V. and J.L.M. wrote the paper.

  • The authors declare no conflict of interest.

  • This article contains supporting information online at www.pnas.org/cgi/content/full/0705369104/DC1.

  • Abbreviations:
    EM,
    Expectation–Maximization;
    F1,
    first formant;
    F2,
    second formant;
    OME,
    Online Mixture Estimation;
    TOME,
    Topographic OME.
  • Freely available online through the PNAS open access option.

« Previous | Next Article »Table of Contents
OPEN ACCESS ARTICLE