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 loretta



Training Transitive and Commutative Multimodal Transformers with LoReTTa

Neural Information Processing Systems

Training multimodal foundation models is challenging due to the limited availability of multimodal datasets. While many public datasets pair images with text, few combine images with audio or text with audio. Even rarer are datasets that align all three modalities at once. Critical domains such as healthcare, infrastructure, or transportation are particularly affected by missing modalities. This makes it difficult to integrate all modalities into a large pre-trained neural network that can be used out-of-the-box or fine-tuned for different downstream tasks.



Training Transitive and Commutative Multimodal Transformers with LoReTTa

Neural Information Processing Systems

Training multimodal foundation models is challenging due to the limited availability of multimodal datasets. While many public datasets pair images with text, few combine images with audio or text with audio. Even rarer are datasets that align all three modalities at once. Critical domains such as healthcare, infrastructure, or transportation are particularly affected by missing modalities. This makes it difficult to integrate all modalities into a large pre-trained neural network that can be used out-of-the-box or fine-tuned for different downstream tasks.


Training Transitive and Commutative Multimodal Transformers with LoReTTa

Neural Information Processing Systems

Training multimodal foundation models is challenging due to the limited availability of multimodal datasets. While many public datasets pair images with text, few combine images with audio or text with audio. Even rarer are datasets that align all three modalities at once. Critical domains such as healthcare, infrastructure, or transportation are particularly affected by missing modalities. This makes it difficult to integrate all modalities into a large pre-trained neural network that can be used out-of-the-box or fine-tuned for different downstream tasks.


Training Transitive and Commutative Multimodal Transformers with LoReTTa

arXiv.org Artificial Intelligence

Training multimodal foundation models is challenging due to the limited availability of multimodal datasets. While many public datasets pair images with text, few combine images with audio or text with audio. Even rarer are datasets that align all three modalities at once. Critical domains such as healthcare, infrastructure, or transportation are particularly affected by missing modalities. This makes it difficult to integrate all modalities into a large pre-trained neural network that can be used out-of-the-box or fine-tuned for different downstream tasks. We introduce LoReTTa (Linking mOdalities with a tRansitive and commutativE pre-Training sTrAtegy) to address this understudied problem. Our self-supervised framework unifies causal modeling and masked modeling with the rules of commutativity and transitivity. This allows us to transition within and between modalities. As a result, our pre-trained models are better at exploring the true underlying joint probability distribution. Given a dataset containing only the disjoint combinations (A, B) and (B, C), LoReTTa can model the relation A <-> C with A <-> B <-> C. In particular, we show that a transformer pre-trained with LoReTTa can handle any mixture of modalities at inference time, including the never-seen pair (A, C) and the triplet (A, B, C). We extensively evaluate our approach on a synthetic, medical, and reinforcement learning dataset. Across different domains, our universal multimodal transformer consistently outperforms strong baselines such as GPT, BERT, and CLIP on tasks involving the missing modality tuple.


The near-futurism of Disney Channel original movies -- does it hold up?

#artificialintelligence

Does It Hold Up is a chance to re-experience childhood favorites of books, movies, TV shows, video games, and other cultural phenomenon decades later. Have they gotten better like a fine wine, or are we drinking cork? A cornerstone of any pre-teen's life between 1998 to 2007 was the Disney Channel original movie. If you grew up during that time you do not need a refresher on why movies like Halloweentown or Zenon: Girl of the 21st Century were popular -- they were your main option for entertainment because you were constantly at home! (That is what it is like to not have a driver's license.) But you may need a refresher on their content, because I just revisited a bunch of them and they are not what I thought.