The work presented in this thesis is toward the goal of extracting structure and meaning from neuroscientific data. Data in visual neuroscience is becoming increasingly high dimensional and the stimulus-response relationships can be highly nonlinear. Data in visual neuroscience is also somewhat noisy due to the imprecise separation of signals from multiple neurons on an electrode, nonstationary effects in the brain, and inherent noise in the brain; neurons rarely respond identically to identical stimuli. Finding nonlinear relationships between a high dimensional stimulus and neural responses in the presence of substantial noise is a challenging nonlinear regression problem. This thesis presents effective techniques for solving this problem ...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
A. The LN model, which consists of a spectrotemporal receptive field (STRF) followed by a sigmoid no...
Visual neuroscientists have discovered fundamental properties of neural representation through caref...
A primary focus of neuroscience is understanding how information about the world is encoded in the a...
A model that fully describes the response properties of visual neurons must be able to predict their...
<div><p>The computation represented by a sensory neuron's response to stimuli is constructed from an...
Perceptual inference relies on very nonlinear processing of high-dimensional sensory inputs. This po...
We present an approach to obtain nonlinear information about neuronal response by com-puting multipl...
Learning in neural networks is usually applied to parameters related to linear kernels and keeps the...
This thesis has examined nonlinear signal summation using a combination of EEG and computational mod...
<p>A: Scheme of the linear-nonlinear model to fit <b>PostE</b> responses. The stimulus is first conv...
Understanding the mapping between stimulus, behavior, and neural responses is vital for understandin...
The relation between sensory input and neural activity is often complex. In peripheral neurons, suc...
Neural responses in visual cortex are influenced by visual stimuli and by ongoing spiking activity i...
A central challenge in sensory neuroscience involves understanding how neural circuits shape computa...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
A. The LN model, which consists of a spectrotemporal receptive field (STRF) followed by a sigmoid no...
Visual neuroscientists have discovered fundamental properties of neural representation through caref...
A primary focus of neuroscience is understanding how information about the world is encoded in the a...
A model that fully describes the response properties of visual neurons must be able to predict their...
<div><p>The computation represented by a sensory neuron's response to stimuli is constructed from an...
Perceptual inference relies on very nonlinear processing of high-dimensional sensory inputs. This po...
We present an approach to obtain nonlinear information about neuronal response by com-puting multipl...
Learning in neural networks is usually applied to parameters related to linear kernels and keeps the...
This thesis has examined nonlinear signal summation using a combination of EEG and computational mod...
<p>A: Scheme of the linear-nonlinear model to fit <b>PostE</b> responses. The stimulus is first conv...
Understanding the mapping between stimulus, behavior, and neural responses is vital for understandin...
The relation between sensory input and neural activity is often complex. In peripheral neurons, suc...
Neural responses in visual cortex are influenced by visual stimuli and by ongoing spiking activity i...
A central challenge in sensory neuroscience involves understanding how neural circuits shape computa...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
A. The LN model, which consists of a spectrotemporal receptive field (STRF) followed by a sigmoid no...
Visual neuroscientists have discovered fundamental properties of neural representation through caref...