Valpola, Harri (2004) Behaviourally meaningful representations from normalisation and context-guided denoising. [Departmental Technical Report]
Full text available as:
|
PDF
142Kb |
Abstract
Many existing independent component analysis algorithms include a preprocessing stage where the inputs are sphered. This amounts to normalising the data such that all correlations between the variables are removed. In this work, I show that sphering allows very weak contextual modulation to steer the development of meaningful features. Context-biased competition has been proposed as a model of covert attention and I propose that sphering-like normalisation also allows weaker top-down bias to guide attention.
Item Type: | Departmental Technical Report |
---|---|
Subjects: | Neuroscience > Computational Neuroscience Computer Science > Machine Learning Computer Science > Neural Nets Computer Science > Artificial Intelligence |
ID Code: | 3633 |
Deposited By: | Valpola, Harri |
Deposited On: | 14 May 2004 |
Last Modified: | 11 Mar 2011 08:55 |
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