Published June 4, 2024 | Version v1
Journal article Open

Visually Grounded Speech Models Have a Mutual Exclusivity Bias

  • 1. ROR icon Stellenbosch University
  • 2. POLITEHNICA Bucharest
  • 3. ROR icon University of Groningen

Description

When children learn new words, they employ constraints such as the mutual exclusivity (ME) bias: A novel word is mapped to a novel object rather than a familiar one. This bias has been studied computationally, but only in models that use discrete word representations as input, ignoring the high variability of spoken words. We investigate the ME bias in the context of visually grounded speech models that learn from natural images and continuous speech audio. Concretely, we train a model on familiar words and test its ME bias by asking it to select between a novel and a familiar object when queried with a novel word. To simulate prior acoustic and visual knowledge, we experiment with several initialization strategies using pretrained speech and vision networks. Our findings reveal the ME bias across the different initialization approaches, with a stronger bias in models with more prior (in particular, visual) knowledge. Additional tests confirm the robustness of our results, even when different loss functions are considered. Based on detailed analyses to piece out the model’s representation space, we attribute the ME bias to how familiar and novel classes are distinctly separated in the resulting space.

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Additional details

Funding

European Commission
AI4TRUST – AI-based-technologies for trustworthy solutions against disinformation 101070190