<mods:mods version="3.3" xsi:schemaLocation="http://www.loc.gov/mods/v3 http://www.loc.gov/standards/mods/v3/mods-3-3.xsd" xmlns:mods="http://www.loc.gov/mods/v3" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance"><mods:titleInfo><mods:title>Behaviourally meaningful representations from normalisation and context-guided denoising</mods:title></mods:titleInfo><mods:name type="personal"><mods:namePart type="given">Harri</mods:namePart><mods:namePart type="family">Valpola</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods: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.
</mods:abstract><mods:classification authority="lcc">Computational Neuroscience</mods:classification><mods:classification authority="lcc">Machine Learning</mods:classification><mods:classification authority="lcc">Neural Nets</mods:classification><mods:classification authority="lcc">Artificial Intelligence</mods:classification><mods:originInfo><mods:dateIssued encoding="iso8061">2004-05</mods:dateIssued></mods:originInfo><mods:genre>Departmental Technical Report</mods:genre></mods:mods>