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arxiv: 1301.3539 · v1 · pith:F4PRXZI2new · submitted 2013-01-16 · 💻 cs.LG

Learning Features with Structure-Adapting Multi-view Exponential Family Harmoniums

classification 💻 cs.LG
keywords multi-viewextractionfeaturemodelsa-mvhstructure-adaptingswitchachieve
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We proposea graphical model for multi-view feature extraction that automatically adapts its structure to achieve better representation of data distribution. The proposed model, structure-adapting multi-view harmonium (SA-MVH) has switch parameters that control the connection between hidden nodes and input views, and learn the switch parameter while training. Numerical experiments on synthetic and a real-world dataset demonstrate the useful behavior of the SA-MVH, compared to existing multi-view feature extraction methods.

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