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MoCA: Multi-modal Cross-masked Autoencoder for Digital Health Measurements

MoCA: Multi-modal Cross-masked Autoencoder for Digital Health Measurements

来源:Arxiv_logoArxiv
英文摘要

The growing prevalence of digital health technologies has led to the generation of complex multi-modal data, such as physical activity measurements simultaneously collected from various sensors of mobile and wearable devices. These data hold immense potential for advancing health studies, but current methods predominantly rely on supervised learning, requiring extensive labeled datasets that are often expensive or impractical to obtain, especially in clinical studies. To address this limitation, we propose a self-supervised learning framework called Multi-modal Cross-masked Autoencoder (MoCA) that leverages cross-modality masking and the Transformer autoencoder architecture to utilize both temporal correlations within modalities and cross-modal correlations between data streams. We also provide theoretical guarantees to support the effectiveness of the cross-modality masking scheme in MoCA. Comprehensive experiments and ablation studies demonstrate that our method outperforms existing approaches in both reconstruction and downstream tasks. We release open-source code for data processing, pre-training, and downstream tasks in the supplementary materials. This work highlights the transformative potential of self-supervised learning in digital health and multi-modal data.

Howon Ryu、Yuliang Chen、Yacun Wang、Andrea Z. LaCroix、Chongzhi Di、Loki Natarajan、Yu Wang、Jingjing Zou

计算技术、计算机技术医学研究方法

Howon Ryu,Yuliang Chen,Yacun Wang,Andrea Z. LaCroix,Chongzhi Di,Loki Natarajan,Yu Wang,Jingjing Zou.MoCA: Multi-modal Cross-masked Autoencoder for Digital Health Measurements[EB/OL].(2025-06-02)[2025-07-16].https://arxiv.org/abs/2506.02260.点此复制

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