Training on multiple modalities of input can augment the capabilities of a language model. Here, we ask whether such a training regime can improve the quality and efficiency of these systems as well. We focus on text--audio and introduce Whisbert, which is inspired by the text--image approach of FLAVA (Singh et al., 2022). In accordance with Babylm guidelines (Warstadt et al., 2023), we pretrain Whisbert on a dataset comprising only 100 million words plus their corresponding speech from the word-aligned version of the People's Speech dataset (Galvez et al., 2021). To assess the impact of multimodality, we compare versions of the model that are trained on text only and on both audio and text simultaneously. We find that while Whisbert is able to perform well on multimodal masked modeling and surpasses the Babylm baselines in most benchmark tasks, it struggles to optimize its complex objective and outperform its text-only Whisbert baseline.
WhisBERT: Multimodal Text-Audio Language Modeling on 100M Words
A multimodal text--audio language model, Whisbert, based on the FLAVA approach, shows improved performance on multimodal tasks but does not consistently outperform its text-only counterpart.
- Year
- 2023
- Venue
- arXiv 2023
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- 7
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- arxiv.org/abs/2312.02931v2ARXIV-DEFAULT
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