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Accurate Characterization of Non-Uniformly Sampled Time Series using Stochastic Differential Equations

机译:使用随机微分方程精确表征非均匀采样时间序列

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Non-uniform sampling arises when an experimenter does not have full control over the sampling characteristics of the process under investigation. Moreover, it is introduced intentionally in algorithms such as Bayesian optimization and compressive sensing. We argue that Stochastic Differential Equations (SDEs) are especially well-suited for characterizing second order moments of such time series. We introduce new initial estimates for the numerical optimization of the likelihood, based on incremental estimation and initialization from autoregressive models. Furthermore, we introduce model truncation as a purely data-driven method to reduce the order of the estimated model based on the SDE likelihood. We show the increased accuracy achieved with the new estimator in simulation experiments. Finally, we apply the new estimator to experimental rainfall variability data.
机译:当实验者没有完全控制调查过程的采样特征时,产生不均匀的采样。此外,它是故意在诸如贝叶斯优化和压缩感测的算法中引入的。我们认为随机微分方程(SDES)特别适合于表征这种时间序列的二阶片刻。基于自回归模型的增量估计和初始化,我们介绍了对可能性的数值优化的新初始估计。此外,我们将模型截短为纯粹的数据驱动方法,以减少基于SDE可能性的估计模型的顺序。我们展示了仿真实验中的新估算器所达到的准确性提高。最后,我们将新估算器应用于实验降雨变异性数据。

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