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Using machine learning to assess short term causal dependence and infer network links

机译:使用机器学习评估短期因果依赖性和推断网络链路

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摘要

We introduce and test a general machine-learning-based technique for the inference of short term causal dependence between state variables of an unknown dynamical system from time-series measurements of its state variables. Our technique leverages the results of a machine learning process for short time prediction to achieve our goal. The basic idea is to use the machine learning to estimate the elements of the Jacobian matrix of the dynamical flow along an orbit. The type of machine learning that we employ is reservoir computing. We present numerical tests on link inference of a network of interacting dynamical nodes. It is seen that dynamical noise can greatly enhance the effectiveness of our technique, while observational noise degrades the effectiveness. We believe that the competition between these two opposing types of noise will be the key factor determining the success of causal inference in many of the most important application situations. Published under license by AIP Publishing.
机译:我们介绍并测试了一种基于一般的机器学习的技术,用于从其状态变量的时间序列测量到未知动态系统的状态变量之间的短期因果依赖性推断。我们的技术利用了机器学习过程的结果,以便短时间预测实现我们的目标。基本思想是利用机器学习沿轨道估计动态流动的雅各族矩阵的元素。我们采用的机器学习类型是水库计算。我们对交互动态节点网络的链路推断提供了数值测试。可以看出,动态噪声可以大大提高我们技术的有效性,而观察噪声会降低有效性。我们认为,这两个反对类型的噪声之间的竞争将是确定许多最重要的应用情况中因果推断成功的关键因素。通过AIP发布根据许可发布。

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    《Chaos》 |2019年第12期|共8页
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  • 正文语种 eng
  • 中图分类 自然科学总论;
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