Abstract
Most manifold learning techniques are used to transform high-dimensional data sets into low-dimensional space. In the use of such techniques, after unseen data samples are added to the data set, retraining is usually necessary. However, retraining is a time-consuming process and no guarantee of the transformation into the exactly same coordinates, thus presenting a barrier to the application of manifold learning as a preprocessing step in predictive modeling. To solve this problem, learning a mapping from high-dimensional representations to low-dimensional coordinates is proposed via structured support vector machine. After training a mapping, low-dimensional representations of unobserved data samples can be easily predicted. Experiments on several datasets show that the proposed method outperforms the existing out-of-sample extension methods.
| Original language | English |
|---|---|
| Pages (from-to) | 470-479 |
| Number of pages | 10 |
| Journal | Pattern Recognition |
| Volume | 47 |
| Issue number | 1 |
| DOIs | |
| State | Published - Jan 2014 |
Keywords
- Dimensionality reduction
- Manifold learning
- Out-of-sample extension
- Structured SVM