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Does morphological complexity affect word segmentation? Evidence from computational modeling.

Georgia Loukatou1, Sabine Stoll2, Damian Blasi3

  • 1LSCP, Département d'études cognitives, ENS, EHESS, CNRS, PSL University, 75005 Paris, France.

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Summary
This summary is machine-generated.

Infants may find it harder to segment speech in languages with complex word structures. Algorithm type and evaluation level significantly impact speech segmentation performance more than morphological complexity.

Keywords:
Artificial languageComputational modelingCross-linguistic variationLanguage acquisitionMorphologyStatistical learningWord segmentation

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Area of Science:

  • Developmental psycholinguistics
  • Computational linguistics
  • Language acquisition

Background:

  • Infants must segment continuous speech into words and morphemes.
  • Previous studies focused on English, where word and morpheme boundaries often align.
  • Many languages have complex morphology where word and morpheme boundaries diverge, posing segmentation challenges.

Purpose of the Study:

  • To investigate how infants segment words and morphemes in languages with varying morphological complexity.
  • To compare the performance of different word segmentation algorithms across diverse linguistic structures.
  • To determine the influence of morphological complexity on speech segmentation accuracy.

Main Methods:

  • Utilized corpora from Chintang (Sino-Tibetan) and Japanese, varying in inflectional complexity.
  • Included artificial languages with controlled morphological complexity (morphemes per word).
  • Evaluated two baseline and three diverse word segmentation algorithms (distributional and lexicon-based) on word and morpheme levels.

Main Results:

  • Speech segmentation performance was better for morphologically simpler languages.
  • Segmentation accuracy decreased with increased inflectional complexity.
  • The impact of morphological complexity was less significant than the choice of algorithm and evaluation level.

Conclusions:

  • While morphological complexity affects speech segmentation, its influence is moderate.
  • Algorithm type and evaluation metrics are crucial factors in speech segmentation research.
  • Future infant speech segmentation studies should prioritize investigating algorithmic signatures over cross-linguistic complexity differences.