A review of symbolic analysis of experimental data 论文

2003Review of Scientific Instruments引用 589
Chaos control and synchronizationNeural Networks and ApplicationsPlant and Biological Electrophysiology Studies

详细信息

发表期刊/会议
Review of Scientific Instruments
发表日期
2003-01-30
发表年份
2003

关键词

Chaos control and synchronizationNeural Networks and ApplicationsPlant and Biological Electrophysiology Studies

摘要

This review covers the group of data-analysis techniques collectively referred to as symbolization or symbolic time-series analysis. Symbolization involves transformation of raw time-series measurements (i.e., experimental signals) into a series of discretized symbols that are processed to extract information about the generating process. In many cases, the degree of discretization can be quite severe, even to the point of converting the original data to single-bit values. Current approaches for constructing symbols and detecting the information they contain are summarized. Novel approaches for characterizing and recognizing temporal patterns can be important for many types of experimental systems, but this is especially true for processes that are nonlinear and possibly chaotic. Recent experience indicates that symbolization can increase the efficiency of finding and quantifying information from such systems, reduce sensitivity to measurement noise, and discriminate both specific and general classes of proposed models. Examples of the successful application of symbolization to experimental data are included. Key theoretical issues and limitations of the method are also discussed.