Title :
Markov dependency based on Shannon´s entropy and its application to neural spike trains
Author :
Nakahama, Hiroshi ; Yamamoto, Mitsuaki ; Aya, Kojiro ; Shima, Keisetsu ; Fujii, Hisashi
Author_Institution :
Inst. of Brain Diseases, Tohoku Univ. School of Medicine, Sendai, Japan
Abstract :
A measure of simplified dependency is introduced representing Markovian characteristics based on Shannon´s entropy and conditional entropy under the Gaussian assumption. It is considered to be the most concise measure for expressing the higher order statistical properties of a time series and, in this regard, to be superior to a correlation or spectral measure. Simplified dependency is shown to be closely related to the prediction error in the autoregressive analysis of a time series and to be applicable also to non-Gaussian processes. Both the truncation method of distribution and the ensemble dependency analysis are informative for clarifying the statistical characteristics of interval sequence of a skewed distribution in a heterogeneous time series. These techniques serve to clarify the neural modulation mechanism.
Keywords :
Markov processes; information theory; neurophysiology; time series; Gaussian assumption; Markov dependency; Shannon´s entropy; distribution; ensemble dependency analysis; neural modulation; neural spike trains; neurophysiology; statistical characteristics; time series; truncation method; Correlation; Entropy; Exponential distribution; Joints; Markov processes; Time series analysis;
Journal_Title :
Systems, Man and Cybernetics, IEEE Transactions on
DOI :
10.1109/TSMC.1983.6313062