DocumentCode :
2942510
Title :
From the Entropy to the Statistical Structure of Spike Trains
Author :
Gao, Yun ; Kontoyiannis, Ioannis ; Bienenstock, Elie
Author_Institution :
Brown Univ., Providence, RI
fYear :
2006
fDate :
9-14 July 2006
Firstpage :
645
Lastpage :
649
Abstract :
We use statistical estimates of the entropy rate of spike train data in order to make inferences about the underlying structure of the spike train itself. We first examine a number of different parametric and nonparametric estimators (some known and some new), including the "plug-in" method, several versions of Lempel-Ziv-based compression algorithms, a maximum likelihood estimator tailored to renewal processes, and the natural estimator derived from the context-tree weighting method (CTW). The theoretical properties of these estimators are examined, several new theoretical results are developed, and all estimators are systematically applied to various types of synthetic data and under different conditions. Our main focus is on the performance of these entropy estimators on the (binary) spike trains of 28 neurons recorded simultaneously for a one-hour period from the primary motor and dorsal premotor cortices of a monkey. We show how the entropy estimates can be used to test for the existence of long-term structure in the data, and we construct a hypothesis test for whether the renewal process model is appropriate for these spike trains. Further, by applying the CTW algorithm we derive the maximum a posterior (MAP) tree model of our empirical data, and comment on the underlying structure it reveals
Keywords :
data compression; entropy; maximum likelihood estimation; neural nets; trees (mathematics); Lempel-Ziv-based compression algorithms; context-tree weighting method; dorsal premotor cortices; entropy; maximum a posterior tree model; maximum likelihood estimator; nonparametric estimators; plug-in method; primary motor; renewal process model; spike trains; statistical structure; Compression algorithms; Data compression; Entropy; Frequency estimation; Information analysis; Intersymbol interference; Maximum likelihood estimation; Neurons; Neuroscience; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Theory, 2006 IEEE International Symposium on
Conference_Location :
Seattle, WA
Print_ISBN :
1-4244-0505-X
Electronic_ISBN :
1-4244-0504-1
Type :
conf
DOI :
10.1109/ISIT.2006.261864
Filename :
4036042
Link To Document :
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