2023
DOI: 10.1609/aaai.v37i4.25676
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Sparse Maximum Margin Learning from Multimodal Human Behavioral Patterns

Abstract: We propose a multimodal data fusion framework to systematically analyze human behavioral data from specialized domains that are inherently dynamic, sparse, and heterogeneous. We develop a two-tier architecture of probabilistic mixtures, where the lower tier leverages parametric distributions from the exponential family to extract significant behavioral patterns from each data modality. These patterns are then organized into a dynamic latent state space at the higher tier to fuse patterns from different modalit… Show more

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References 26 publications
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