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Non-parametric determination of real-time lag structure between two time series: the 'optimal thermal causal path' method

机译:两个时间序列之间的实时滞后结构的非参数确定:“最佳热因果路径”方法

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We introduce a novel non-parametric methodology to test for the dynamical time evolution of the lag-lead structure between two arbitrary time series. The method consists of constructing a distance matrix based on the matching of all sample data pairs between the two time series. Then, the lag-lead structure is searched for as the optimal path in the distance matrix landscape that minimizes the total mismatch between the two time series, and that obeys a one-to-one causal matching condition. To make the solution robust to the presence of a large amount of noise that may lead to spurious structures in the distance matrix landscape, we generalize this optimal search by introducing a fuzzy search by sampling over all possible paths, each path being weighted according to a multinornial logit or equivalently Boltzmann factor proportional to the exponential of the global mismatch of this path. We present the efficient transfer matrix method that solves the problem and test it on simple synthetic examples to demonstrate its properties and usefulness compared with the standard running-time cross-correlation method. We then apply our 'optimal thermal causal path' method to the question of the lag-dependence between the US stock market and the treasury bond yields and confirm our earlier results on an arrow of the stock markets preceding the Federal Reserve Funds' adjustments, as well as the yield rates at short maturities in the period 2000-2003. Our application of this technique to inflation, inflation change, GDP growth rate and unemployment rate unearths non-trivial lag relationships: the GDP changes lead inflation especially since the 1980s, inflation changes leads GDP only in the 1980 decade, and inflation leads unemployment rates since the 1970s. In addition, our approach seems to detect multiple competing lag structures in which one can have inflation leading GDP with a certain lag time and GDP feeding back/leading inflation with another lag time.
机译:我们引入了一种新颖的非参数方法来测试两个任意时间序列之间的滞后-提前结构的动态时间演化。该方法包括基于两个时间序列之间所有样本数据对的匹配构造距离矩阵。然后,在距离矩阵景观中搜索滞后-超前结构作为最佳路径,该路径将两个时间序列之间的总失配降至最小,并遵循一对一的因果匹配条件。为了使该解决方案对可能导致距离矩阵格局中出现虚假结构的大量噪声的存在具有鲁棒性,我们通过对所有可能的路径进行采样引入模糊搜索来概括此最优搜索,每个路径均根据多逻辑对数或等效的玻耳兹曼因数,与该路径的整体失配指数成正比。我们提出了一种有效的传输矩阵方法来解决该问题,并在简单的合成示例上进行了测试,以证明其性质和有用性与标准运行时互相关方法相比。然后,我们将“最佳热因果路径”方法应用于美国股票市场与国债收益率之间的滞后依赖问题,并在联邦储备基金进行调整之前在股票市场的箭头上确认了我们先前的结果,因为以及2000-2003年短期内的收益率。我们将此技术应用于通货膨胀,通货膨胀变化,GDP增长率和失业率,揭示了不小的滞后关系:GDP的变化导致通货膨胀,尤其是自1980年代以来;通货膨胀的变化仅在1980年代引领GDP;自通货膨胀以来,通货膨胀领先1970年代。此外,我们的方法似乎检测到了多个竞争性滞后结构,其中一个结构可以使通货膨胀率领先GDP具有一定的滞后时间,而GDP反馈/领先通货膨胀又具有另一个滞后时间。

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