Title
Neural Coding: Higher-Order Temporal Patterns in the Neurostatistics of Cell Assemblies
Abstract
Recent advances in the technology of multiunit recordings make it possible to test Hebb's hypothesis that neurons do not function in isolation but are organized in assemblies. This has created the need for statistical approaches to detecting the presence of spatiotemporal patterns of more than two neurons in neuron spike train data. We mention three possible measures for the presence of higher-order patterns of neural activation—coefficients of log-linear models, connected cumulants, and redundancies—and present arguments in favor of the coefficients of log-linear models. We present test statistics for detecting the presence of higher-order interactions in spike train data by parameterizing these interactions in terms of coefficients of log-linear models. We also present a Bayesian approach for inferring the existence or absence of interactions and estimating their strength. The two methods, the frequentist and the Bayesian one, are shown to be consistent in the sense that interactions that are detected by either method also tend to be detected by the other. A heuristic for the analysis of temporal patterns is also proposed. Finally, a Bayesian test is presented that establishes stochastic differences between recorded segments of data. The methods are applied to experimental data and synthetic data drawn from our statistical models. Our experimental data are drawn from multiunit recordings in the prefrontal cortex of behaving monkeys, the somatosensory cortex of anesthetized rats, and multiunit recordings in the visual cortex of behaving monkeys.
Year
DOI
Venue
2000
10.1162/089976600300014872
Neural Computation
Keywords
Field
DocType
bayesian approach,log linear model,synthetic data,cumulant,neural code,higher order,statistical model
Frequentist inference,Visual cortex,Spike train,Pattern recognition,Neural coding,Statistical model,Artificial intelligence,Artificial neural network,Machine learning,Statistical hypothesis testing,Mathematics,Bayesian probability
Journal
Volume
Issue
ISSN
12
11
0899-7667
Citations 
PageRank 
References 
49
5.01
3
Authors
6
Name
Order
Citations
PageRank
Laura Martignon111317.73
Gustavo Deco21004156.20
Kathryn Blackmond-Laskey3851109.86
Mathew E. Diamond4495.01
Winrich A. Freiwald5526.26
Vaadia, Eilon614115.90