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Autori principali: Lei, Hongyang, Cheng, Xiaolong, Qin, Qi, Wang, Dan, Fan, Kun, Huang, Huazhen, Gu, Qingqing, Wu, Yetao, Jiang, Zhonglin, Chen, Yong, Ji, Luo
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2409.05929
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author Lei, Hongyang
Cheng, Xiaolong
Qin, Qi
Wang, Dan
Fan, Kun
Huang, Huazhen
Gu, Qingqing
Wu, Yetao
Jiang, Zhonglin
Chen, Yong
Ji, Luo
author_facet Lei, Hongyang
Cheng, Xiaolong
Qin, Qi
Wang, Dan
Fan, Kun
Huang, Huazhen
Gu, Qingqing
Wu, Yetao
Jiang, Zhonglin
Chen, Yong
Ji, Luo
contents Current multimodal learning strategies primarily optimize in the original token space. Such a framework is easy to incorporate with the backbone of pretrained language model, but might result in modality collapse. To alleviate such issues, we leverage the Joint-Embedding Predictive Architecture (JEPA) on the multimodal tasks, which converts the input embedding into the output embedding space by a predictor and then conducts the cross-modal alignment on the latent space. We implement this predictor by a Multi-Gate Mixture of Experts (MMoE) and name the framework as M3-JEPA, accordingly. The gating function disentangles the modality-specific and shared information and derives information-theoretic optimality. The framework is implemented with both contrastive and regularization loss, and solved by alternative gradient descent (AGD) between different multimodal tasks. By thoroughly designed experiments, we show that M3-JEPA can obtain state-of-the-art performance on different modalities and tasks, generalize to unseen datasets and domains, and is computationally efficient in both training and inference. Our observation suggests that M3-JEPA might become a new basis to self-supervised learning in the open world.
format Preprint
id arxiv_https___arxiv_org_abs_2409_05929
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle M3-JEPA: Multimodal Alignment via Multi-gate MoE based on the Joint-Embedding Predictive Architecture
Lei, Hongyang
Cheng, Xiaolong
Qin, Qi
Wang, Dan
Fan, Kun
Huang, Huazhen
Gu, Qingqing
Wu, Yetao
Jiang, Zhonglin
Chen, Yong
Ji, Luo
Machine Learning
Artificial Intelligence
Current multimodal learning strategies primarily optimize in the original token space. Such a framework is easy to incorporate with the backbone of pretrained language model, but might result in modality collapse. To alleviate such issues, we leverage the Joint-Embedding Predictive Architecture (JEPA) on the multimodal tasks, which converts the input embedding into the output embedding space by a predictor and then conducts the cross-modal alignment on the latent space. We implement this predictor by a Multi-Gate Mixture of Experts (MMoE) and name the framework as M3-JEPA, accordingly. The gating function disentangles the modality-specific and shared information and derives information-theoretic optimality. The framework is implemented with both contrastive and regularization loss, and solved by alternative gradient descent (AGD) between different multimodal tasks. By thoroughly designed experiments, we show that M3-JEPA can obtain state-of-the-art performance on different modalities and tasks, generalize to unseen datasets and domains, and is computationally efficient in both training and inference. Our observation suggests that M3-JEPA might become a new basis to self-supervised learning in the open world.
title M3-JEPA: Multimodal Alignment via Multi-gate MoE based on the Joint-Embedding Predictive Architecture
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2409.05929