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arxiv: 1602.00078 · v2 · pith:TV3CJANPnew · submitted 2016-01-30 · ⚛️ physics.data-an · cs.DS· math.NA· stat.ML

Latent common manifold learning with alternating diffusion: analysis and applications

classification ⚛️ physics.data-an cs.DSmath.NAstat.ML
keywords analysiscommonlatentmanifoldalternatingapplicationsdatadiffusion
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The analysis of data sets arising from multiple sensors has drawn significant research attention over the years. Traditional methods, including kernel-based methods, are typically incapable of capturing nonlinear geometric structures. We introduce a latent common manifold model underlying multiple sensor observations for the purpose of multimodal data fusion. A method based on alternating diffusion is presented and analyzed; we provide theoretical analysis of the method under the latent common manifold model. To exemplify the power of the proposed framework, experimental results in several applications are reported.

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