Litcius/Paper detail

An oscillating computational model can track pseudo-rhythmic speech by using linguistic predictions

Sanne ten Oever, Andrea E. Martin

2021eLife51 citationsDOIOpen Access PDF

Abstract

Neuronal oscillations putatively track speech in order to optimize sensory processing. However, it is unclear how isochronous brain oscillations can track pseudo-rhythmic speech input. Here we propose that oscillations can track pseudo-rhythmic speech when considering that speech time is dependent on content-based predictions flowing from internal language models. We show that temporal dynamics of speech are dependent on the predictability of words in a sentence. A computational model including oscillations, feedback, and inhibition is able to track pseudo-rhythmic speech input. As the model processes, it generates temporal phase codes, which are a candidate mechanism for carrying information forward in time. The model is optimally sensitive to the natural temporal speech dynamics and can explain empirical data on temporal speech illusions. Our results suggest that speech tracking does not have to rely only on the acoustics but could also exploit ongoing interactions between oscillations and constraints flowing from internal language models.

Topics & Concepts

Computer sciencePredictabilityRhythmSpeech recognitionExploitSpeech processingDynamics (music)SentenceArtificial intelligenceAcousticsPhysicsQuantum mechanicsComputer securityNeural dynamics and brain functionNeuroscience and Music PerceptionNeural Networks and Applications
An oscillating computational model can track pseudo-rhythmic speech by using linguistic predictions | Litcius