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Neighbor embedding XOM for dimension reduction and visualization. Presenter : Kung, Chien-Hao Authors : Kerstin Bunte , Barbara Hammer, Thomas Villmann , Michael Biehl , Axel Wismuller 2011, NN. Outlines. Motivation Objectives Methodology Experiments Conclusions
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Neighbor embedding XOM for dimension reduction and visualization Presenter : Kung, Chien-HaoAuthors : Kerstin Bunte, Barbara Hammer, Thomas Villmann, Michael Biehl, Axel Wismuller2011, NN
Outlines • Motivation • Objectives • Methodology • Experiments • Conclusions • Comments
Motivation • A novel approach to topology learning: XOM • XOM supports both structure-preserving dimensionality reduction and data clustering. • There is no restriction whatsoever on the distance measures used in XOM.
Objectives • Create a conceptual link between: • Fast sequential online learning known from topology-preserving mappings • Principled direct divergence optimization approaches. • Such as SNE and t-SNE
Methodology-Framework XOM SNE Define as the best match input vector Adaptation rule t-SNE
Methodology Gaussian neighborhood T-distribution
Conclusions • NE-XOM as a competitive trade-off between: • High embedding quality • Low computational expense • NE-XOM allows the user to incorporate prior knowledge and to adapt the level of detail resolution.
Comments • Advantages • This content is expressed clearly . • Applications • Dimension reduction .