Escalante-B., Alberto-N. and Wiskott, Prof. Dr. Laurenz (2013) How to Solve Classification and Regression Problems on High-Dimensional Data with a Supervised Extension of Slow Feature Analysis. [Preprint]
Full text available as:
|
PDF
1563Kb |
Abstract
Supervised learning from high-dimensional data, e.g., multimedia data, is a challenging task. We propose an extension of slow feature analysis (SFA) for supervised dimensionality reduction called graph-based SFA (GSFA). The algorithm extracts a label-predictive low-dimensional set of features that can be post-processed by typical supervised algorithms to generate the final label or class estimation. GSFA is trained with a so-called training graph, in which the vertices are the samples and the edges represent similarities of the corresponding labels. A new weighted SFA optimization problem is introduced, generalizing the notion of slowness from sequences of samples to such training graphs. We show that GSFA computes an optimal solution to this problem in the considered function space, and propose several types of training graphs. For classification, the most straightforward graph yields features equivalent to those of (nonlinear) Fisher discriminant analysis. Emphasis is on regression, where four different graphs were evaluated experimentally with a subproblem of face detection on photographs. The method proposed is promising particularly when linear models are insufficient, as well as when feature selection is difficult.
Item Type: | Preprint |
---|---|
Keywords: | Slow feature analysis, feature extraction, classification, regression, pattern recognition, training graphs, nonlinear dimensionality reduction, supervised learning, high-dimensional data, implicitly supervised, image analysis. |
Subjects: | Computer Science > Machine Learning Computer Science > Machine Vision Computer Science > Neural Nets |
ID Code: | 8966 |
Deposited By: | Escalante-B., Alberto-N. |
Deposited On: | 04 May 2013 23:24 |
Last Modified: | 04 May 2013 23:24 |
Metadata
- ASCII Citation
- Atom
- BibTeX
- Dublin Core
- EP3 XML
- EPrints Application Profile (experimental)
- EndNote
- HTML Citation
- ID Plus Text Citation
- JSON
- METS
- MODS
- MPEG-21 DIDL
- OpenURL ContextObject
- OpenURL ContextObject in Span
- RDF+N-Triples
- RDF+N3
- RDF+XML
- Refer
- Reference Manager
- Search Data Dump
- Simple Metadata
- YAML
Repository Staff Only: item control page