Speech features are weighted by selective attention
Nika Jurov, Grayson Wolf, William Idsardi, Naomi Feldman, University of Maryland, United States
Session:
Posters 2B Poster
Presentation Time:
Fri, 25 Aug, 13:00 - 15:00 United Kingdom Time
Abstract:
Listeners typically rely more on one aspect of the speech signal than another when categorizing speech sounds. This is known as feature weighting. We present a rate distortion theory model of feature weighting and use it to ask whether human listeners select feature weights simply by mirroring the feature reliabilities that are present in their input. We show that there is an additional component (selective attention) listeners appear to use that is not reflected by the input statistics. This suggests that an internal mechanism is at play in governing listeners' weighting of different aspects of the speech signal, in addition to tracking statistics.