A Neural Model for Word Repetition
Daniel Dager, Robin Sobczyk, Emmanuel Chemla, Yair Lakretz

TL;DR
This paper develops neural network models to simulate human word repetition, aiming to understand the neural mechanisms involved and how brain damage affects speech errors, bridging cognitive theories and neural implementation.
Contribution
It introduces a neural modeling approach to simulate word repetition, including testing effects and simulating brain damage, advancing understanding of neural mechanisms behind speech production.
Findings
Models replicate several human behavioral effects
Ablation studies reveal effects of neural damage on speech errors
Models show divergence from some human behaviors
Abstract
It takes several years for the developing brain of a baby to fully master word repetition-the task of hearing a word and repeating it aloud. Repeating a new word, such as from a new language, can be a challenging task also for adults. Additionally, brain damage, such as from a stroke, may lead to systematic speech errors with specific characteristics dependent on the location of the brain damage. Cognitive sciences suggest a model with various components for the different processing stages involved in word repetition. While some studies have begun to localize the corresponding regions in the brain, the neural mechanisms and how exactly the brain performs word repetition remain largely unknown. We propose to bridge the gap between the cognitive model of word repetition and neural mechanisms in the human brain by modeling the task using deep neural networks. Neural models are fully…
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Taxonomy
TopicsSpeech Recognition and Synthesis · Natural Language Processing Techniques
