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Dimensionality Reduction Mappings. Presenter : Wei- Hao Huang Authors : Kerstin Bunte , Michael Biehl , Barbara Hammer CIDM, 2011. Outlines. Motivation Objectives Methodology Experiments Conclusions Comments. Motivation.
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Dimensionality Reduction Mappings Presenter : Wei-Hao Huang Authors : Kerstin Bunte, Michael Biehl, Barbara Hammer CIDM, 2011
Outlines • Motivation • Objectives • Methodology • Experiments • Conclusions • Comments
Motivation • Providing a mapping of a priorly given finite set of points only, requiring additional steps for out-of-sample extensions. Dimensionality Reduction (tSNE, MDS, Isomap) Old data Map New data
Objectives • To propose general view on dimensionality reduction based on the concept of cost functions, and based on this general principle Dimensionality Reduction Prior(tSNE, MDS, Isomap) Old data Map New data
Methodology General View General Principle Generalization Ability
Methodology Data Characteristics of data (Euclidean distance) Characteristics of projections (Euclidean distance) Error measure (Cost function)
Methodology • General Principle • Apply on tSNE • Global linear mapping
Methodology • Apply on tSNE • Local linear mappings
Methodology • Generalization Ability
Experiments Unsupervised clustering
Conclusions The paper opens a way towards a theory of data visualization taking the perspective of its generalization ability to new data points.
Comments • Advantages • This paper opens a way towards a theory of data visualization • Applications • Dimensionality reduction