about
Multiple neural spike train data analysis: state-of-the-art and future challengesNeurophysiological and computational principles of cortical rhythms in cognitionRuling out and ruling in neural codesFractals in the nervous system: conceptual implications for theoretical neuroscienceStatistical smoothing of neuronal data.Statistical issues in the analysis of neuronal data.Flexible models for spike count data with both over- and under- dispersion.The time-rescaling theorem and its application to neural spike train data analysis.An adjustment to the time-rescaling method for application to short-trial spike train data.Comparison of two populations of curves with an application in neuronal data analysis.Discrete time rescaling theorem: determining goodness of fit for discrete time statistical models of neural spiking.A maximum entropy test for evaluating higher-order correlations in spike counts.A point process framework for relating neural spiking activity to spiking history, neural ensemble, and extrinsic covariate effects.Aggregate input-output models of neuronal populationsExtraction of Network Topology From Multi-Electrode Recordings: Is there a Small-World Effect?A rate and history-preserving resampling algorithm for neural spike trainsApplying the multivariate time-rescaling theorem to neural population models.A semiparametric Bayesian model for detecting synchrony among multiple neurons.Establishing a Statistical Link between Network Oscillations and Neural SynchronyStatistical properties of superimposed stationary spike trains.Non-stationary discharge patterns in motor cortex under subthalamic nucleus deep brain stimulation.Parametric models to relate spike train and LFP dynamics with neural information processingThe effects of cues on neurons in the basal ganglia in Parkinson's disease.A point-process response model for spike trains from single neurons in neural circuits under optogenetic stimulation.Local field potentials indicate network state and account for neuronal response variabilityAnalysis of between-trial and within-trial neural spiking dynamics.Intermediate intrinsic diversity enhances neural population codingIdentification of sparse neural functional connectivity using penalized likelihood estimation and basis functions.Point process modeling reveals anatomical non-uniform distribution across the subthalamic nucleus in Parkinson's disease.Using point process models to compare neural spiking activity in the subthalamic nucleus of Parkinson's patients and a healthy primateOn the Spike Train Variability Characterized by Variance-to-Mean Power Relationship.A Dynamic Bayesian Model for Characterizing Cross-Neuronal Interactions During Decision-Making.A Novel Nonparametric Approach for Neural Encoding and Decoding Models of Multimodal Receptive Fields.An Empirical Model for Reliable Spiking Activity.The equivalence of information-theoretic and likelihood-based methods for neural dimensionality reduction.Spike train probability models for stimulus-driven leaky integrate-and-fire neuronsBayesian inference of functional connectivity and network structure from spikes.Signal-independent timescale analysis (SITA) and its application for neural coding during reaching and walking.Modulations in the oscillatory activity of the Globus Pallidus internus neurons during a behavioral task-A point process analysis.Reconstruction of Sensory Stimuli Encoded with Integrate-and-Fire Neurons with Random Thresholds.
P2860
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P2860
description
2001 nî lūn-bûn
@nan
2001 թուականի Օգոստոսին հրատարակուած գիտական յօդուած
@hyw
2001 թվականի օգոստոսին հրատարակված գիտական հոդված
@hy
2001年の論文
@ja
2001年論文
@yue
2001年論文
@zh-hant
2001年論文
@zh-hk
2001年論文
@zh-mo
2001年論文
@zh-tw
2001年论文
@wuu
name
A Spike-Train Probability Model
@ast
A Spike-Train Probability Model
@en
type
label
A Spike-Train Probability Model
@ast
A Spike-Train Probability Model
@en
prefLabel
A Spike-Train Probability Model
@ast
A Spike-Train Probability Model
@en
P2860
P1433
P1476
A Spike-Train Probability Model
@en
P2093
Robert E. Kass
P2860
P304
P356
10.1162/08997660152469314
P577
2001-08-01T00:00:00Z