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Detecting causality from short time-series data based on prediction of topologically equivalent attractors

机译:基于拓扑等效吸引子的预测从短时间序列数据中检测因果关系

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摘要

id="__sec1title">BackgroundDetecting 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.
机译:id =“ __ sec1title”>背景检测短时间序列数据(例如基因调控数据)的因果关系非常重要,但通常非常困难。这可以用于许多领域,特别是在生物系统中。最近,已经建立了几种有效的方法来解决该问题。但是,对于在给定或观察到的数据中检测因果关系的现有方法,通常需要非常长的时间序列数据或更多样本。在我们的实际应用中,例如在生物系统中,获得的数据或样本很少或很小。由于数据或样本高度依赖于实验或有限的资源。

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