A neural network architecture for learning word-referent associations in multiple contexts

Neural Netw. 2019 Sep:117:249-267. doi: 10.1016/j.neunet.2019.05.017. Epub 2019 May 27.

Abstract

This article proposes a biologically inspired neurocomputational architecture which learns associations between words and referents in different contexts, considering evidence collected from the literature of Psycholinguistics and Neurolinguistics. The multi-layered architecture takes as input raw images of objects (referents) and streams of word's phonemes (labels), builds an adequate representation, recognizes the current context, and associates label with referents incrementally, by employing a Self-Organizing Map which creates new association nodes (prototypes) as required, adjusts the existing prototypes to better represent the input stimuli and removes prototypes that become obsolete/unused. The model takes into account the current context to retrieve the correct meaning of words with multiple meanings. Simulations show that the model can reach up to 78% of word-referent association accuracy in ambiguous situations and approximates well the learning rates of humans as reported by three different authors in five Cross-Situational Word Learning experiments, also displaying similar learning patterns in the different learning conditions.

Keywords: Context; Cross-situational word learning; Learning representations; Neurocomputational model; Self-organizing maps.

MeSH terms

  • Association Learning*
  • Humans
  • Linguistics*
  • Machine Learning*