Symbolic transfer entropy is a powerful non-parametric tool to detect lead-lag between time series. Because a closed expression of the distribution of Transfer Entropy is not known for finite-size samples, statistical testing is often performed with bootstraps whose slowness prevents the inference of large lead-lag networks between long time series. On the other hand, the asymptotic distribution of Transfer Entropy between two time series is known. In this work, we derive the asymptotic distribution of the test for one time series having a larger Transfer Entropy than another one on a target time series. We then measure the convergence speed of both tests in the small sample size limits via benchmarks. We then introduce Transfer Entropy between time-shifted time series, which allows to measure the timescale at which information transfer is maximal and vanishes. We finally apply these methods to tick-by-tick price changes of several hundreds of stocks, yielding non-trivial statistically validated networks.
翻译:符号转移酶是探测时间序列之间铅渣的一种强大的非参数性工具。由于对有限尺寸样本来说,转移元件分布的封闭表达方式并不为人所知,因此,统计测试往往是用长时间序列之间大型铅渣网络推推推力缓慢的靴子装置进行的。另一方面,在两个时间序列之间转移元件的无症状分布是已知的。在这项工作中,我们得出一个时间序列的测试无症状分布,在目标时间序列上,转移元件比另一个时间序列大。我们然后通过基准用小样本规模限制衡量两次测试的聚合速度。我们随后在时间变化时间序列之间引入转移元件,从而能够测量信息转移最大和消失的时间尺度。我们最后运用这些方法来逐个决定数以百种库存的价格变化,产生非三重统计验证网络。