DS1 spectrogram: GraphPL: Leveraging GNN for Efficient and Robust Modalities Imputation in Patchwork Learning

GraphPL: Leveraging GNN for Efficient and Robust Modalities Imputation in Patchwork Learning

2604.25352

Authors

Xingjian Hu,Zuoyu Yan,Jianhua Zhu,Liangcai Gao,Fei Wang

Abstract

Current research on distributed multi-modal learning typically assumes that clients can access complete information across all modalities, which may not hold in practice. In this paper, we explore patchwork learning, in which the modalities available to different clients vary, and the objective is to impute the missing modalities for each client in an unsupervised manner.

Existing methods are shown not to fully utilize the modality information as they tend to rely on only a subset of the observed modalities. To address this issue, we propose GraphPL, which combines graph neural networks with patchwork learning to flexibly integrate all observed modalities and remains robust with noisy inputs.

Experimental results show that GraphPL achieves SOTA performance on benchmark datasets. Our results on real-world distributed electronic health record dataset show GraphPL learns strong downstream features and enables tasks like disease prediction via superior modality imputation.

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