State space methods have proven indispensable in neural data analysis. However, common methods for performing inference in state-space models with non-Gaussian observations rely on certain approximations which are not always accurate. Here we review direct optimization methods that avoid these approximations, but that nonetheless retain the computational efficiency of the approximate methods. We discuss a variety of examples, applying these direct optimization techniques to problems in spike train smoothing, stimulus decoding, parameter estimation, and inference of synaptic properties. Along the way, we point out connections to some related standard statistical methods, including spline smoothing and isotonic regression. Finally, we note th...
The Ising Model has recently received much attention for the statistical description of neural spike...
Stimulus reconstruction or decoding methods provide an important tool for understanding how sensory ...
A state-space method for simultaneously estimating time-dependent rate and higher-order correlation ...
The accurate characterization of spike firing rates including the determination of when changes in a...
This thesis develops and applies statistical methods for the analysis of neural data. In the second ...
Neurons within cortical populations are tightly coupled into collective dynamical systems that code ...
This thesis develops and applies statistical methods for the analysis of neural data. In the second ...
Neural spike train analysis is an important task in computational neuroscience which aims to underst...
Abstract: Neural spike trains, the primary communication signals in the brain, can be accurately mod...
Rapid developments in neural interface technology are making it possible to record increasingly larg...
Traditional approaches to the problem of parameter estimation in biophysical models of neurons and n...
A state-space method for simultaneously estimating time-dependent rate and higher-order correlation ...
Given recent experimental results suggesting that neural circuits may evolve through multiple firing...
The neural decoding problem is of fundamental importance in computational and systems neuroscience: ...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
The Ising Model has recently received much attention for the statistical description of neural spike...
Stimulus reconstruction or decoding methods provide an important tool for understanding how sensory ...
A state-space method for simultaneously estimating time-dependent rate and higher-order correlation ...
The accurate characterization of spike firing rates including the determination of when changes in a...
This thesis develops and applies statistical methods for the analysis of neural data. In the second ...
Neurons within cortical populations are tightly coupled into collective dynamical systems that code ...
This thesis develops and applies statistical methods for the analysis of neural data. In the second ...
Neural spike train analysis is an important task in computational neuroscience which aims to underst...
Abstract: Neural spike trains, the primary communication signals in the brain, can be accurately mod...
Rapid developments in neural interface technology are making it possible to record increasingly larg...
Traditional approaches to the problem of parameter estimation in biophysical models of neurons and n...
A state-space method for simultaneously estimating time-dependent rate and higher-order correlation ...
Given recent experimental results suggesting that neural circuits may evolve through multiple firing...
The neural decoding problem is of fundamental importance in computational and systems neuroscience: ...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
The Ising Model has recently received much attention for the statistical description of neural spike...
Stimulus reconstruction or decoding methods provide an important tool for understanding how sensory ...
A state-space method for simultaneously estimating time-dependent rate and higher-order correlation ...