Vikalo, HarisPillow, Jonathan W.2010-11-022010-11-022017-05-112010-11-022010-11-022017-05-112010-05May 2010http://hdl.handle.net/2152/ETD-UT-2010-05-1359textA fundamental question on visual system in neuroscience is how the visual stimuli are functionally related to neural responses. This relationship is often explained by the notion of receptive fields, an approximated linear or quasi-linear filter that encodes the high dimensional visual stimuli into neural spikes. Traditional methods for estimating the filter do not efficiently exploit prior information about the structure of neural receptive fields. Here, we propose several approaches to design the prior distribution over the filter, considering the neurophysiological fact that receptive fields tend to be localized both in space-time and spatio-temporal frequency domain. To automatically regularize the estimation of neural receptive fields, we use the evidence optimization technique, a MAP (maximum a posteriori) estimation under a prior distribution whose parameters are set by maximizing the marginal likelihood. Simulation results show that the proposed methods can estimate the receptive field using datasets that are tens to hundreds of times smaller than those required by traditional methods.application/pdfengNeural receptive fieldsLinear regressionRegularizationSpatio-temporal restricted priorFrequency restricted priorAutomatic regularization technique for the estimation of neural receptive fieldsthesis2010-11-02