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Detecting causality from short time-series data based on prediction of topologically equivalent attractors
Authors:Ben-gong Zhang  Weibo Li  Yazhou Shi  Xiaoping Liu  Luonan Chen
Affiliation:1.School of Mathematics & Computer Science, Wuhan Textile University,Wuhan,China;2.Research Center of Nonlinear Science, Wuhan Textile University,Wuhan,China;3.Key Laboratory of Systems Biology, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences,Shanghai,China
Abstract:

Background

Detecting causality for short time-series data such as gene regulation data is quite important but it is usually very difficult. This can be used in many fields especially in biological systems. Recently, several powerful methods have been set up to solve this problem. However, it usually needs very long time-series data or much more samples for the existing methods to detect causality among the given or observed data. In our real applications, such as for biological systems, the obtained data or samples are short or small. Since the data or samples are highly depended on experiment or limited resource.

Results

In order to overcome these limitations, here we propose a new method called topologically equivalent position method which can detect causality for very short time-series data or small samples. This method is mainly based on attractor embedding theory in nonlinear dynamical systems. By comparing with inner composition alignment, we use theoretical models and real gene expression data to show the effectiveness of our method.

Conclusions

As a result, it shows our method can be effectively used in biological systems. We hope our method can be useful in many other fields in near future such as complex networks, ecological systems and so on.
Keywords:
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