Deep kernel dimensionality reduction for scalable data integration |
| |
Affiliation: | 1. Institute of Cardiometabolism and Nutrition, ICAN, Assistance Publique Hôpitaux de Paris, Pitié-Salpêtrière Hospital, Paris, France;2. Sorbonne Universités, UPMC University Paris 6, UMR_S 1166, ICAN, NutriOmics Team, Paris, France;3. INSERM, UMR S U1166, NutriOmics Team, Paris, France;4. Research Institute for Development, UMI 209, UMMISCO, Bondy, France |
| |
Abstract: |  Dimensionality reduction is used to preserve significant properties of data in a low-dimensional space. In particular, data representation in a lower dimension is needed in applications, where information comes from multiple high dimensional sources. Data integration, however, is a challenge in itself.In this contribution, we consider a general framework to perform dimensionality reduction taking into account that data are heterogeneous. We propose a novel approach, called Deep Kernel Dimensionality Reduction which is designed for learning layers of new compact data representations simultaneously. The method can be also used to learn shared representations between modalities. We show by experiments on standard and on real large-scale biomedical data sets that the proposed method embeds data in a new compact meaningful representation, and leads to a lower classification error compared to the state-of-the-art methods. |
| |
Keywords: | Dimensionality reduction Heterogeneous data integration |
本文献已被 ScienceDirect 等数据库收录! |
|