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Deep Co-Attention Network for Multi-View Subspace Learning

Lecheng Zheng, Yu Cheng, Hongxia Yang, Nan Cao, Jingrui He

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Abstract

Many real-world applications involve data from multiple modalities and thus exhibit the view heterogeneity. For example, user modeling on social media might leverage both the topology of the underlying social network and the content of the users’ posts; in the medical domain, multiple views could be X-ray images taken at different poses. To date, various techniques have been proposed to achieve promising results, such as canonical correlation analysis based methods, etc. In the meanwhile, it is critical for decision-makers to be able to understand the prediction results from these methods. For example, given the diagnostic result that a model provided based on the X-ray images of a patient at different poses, the doctor needs to know why the model made such a prediction. However, state-of-the-art techniques usually suffer from the inability to utilize the complementary information of each view and to explain the predictions in an interpretable manner.

Topics & Concepts

Leverage (statistics)Computer scienceSubspace topologyModalitiesMachine learningArtificial intelligenceSocial mediaData scienceDomain (mathematical analysis)Canonical correlationDeep learningNetwork topologyData miningWorld Wide WebMathematicsSocial scienceSociologyOperating systemMathematical analysisDomain Adaptation and Few-Shot LearningMultimodal Machine Learning ApplicationsAdvanced Graph Neural Networks