论文标题
随着COVID-19危机的展开,对铅滞后关系进行了深入研究,重点关注FX市场
Examining Lead-Lag Relationships In-Depth, With Focus On FX Market As Covid-19 Crises Unfolds
论文作者
论文摘要
铅滞后关系在金融市场中起着至关重要的作用。这是某种价格序列落后并部分复制领先时间序列的运动的现象。本研究提出了一种新技术,可帮助更好地从经验上识别铅滞后关系。除了更好地识别铅滞后路径外,该技术还提供了裁定财务时间序列之间的亲密关系的措施。同样,提出的度量与相关性密切相关,并且使用动态编程技术来查找最佳的铅滞后路径。此外,它保留了公制的大多数属性,因此被称为宽松度量。对具有已知铅滞后关系的合成时间序列(ST)进行测试,并根据显着性和预测性进行比较与其他最先进模型进行了比较。所提出的技术在两项测试中都提供了最佳效果。它找到了所有具有统计学意义的路径,并且其预测最接近目标值。然后,我们使用该措施来研究外汇市场的拓扑演变,因为COVID-19的大流行展开。在这里,我们研究了世界29个著名国家的FX货币价格。据观察,随着危机的发展,所有货币都彼此之间紧密相互联系。此外,美国美元开始在FX市场中发挥更大的核心作用。最后,我们提到了针对设计智能系统的建议技术的其他几个应用领域。
The lead-lag relationship plays a vital role in financial markets. It is the phenomenon where a certain price-series lags behind and partially replicates the movement of leading time-series. The present research proposes a new technique which helps better identify the lead-lag relationship empirically. Apart from better identifying the lead-lag path, the technique also gives a measure for adjudging closeness between financial time-series. Also, the proposed measure is closely related to correlation, and it uses Dynamic Programming technique for finding the optimal lead-lag path. Further, it retains most of the properties of a metric, so much so, it is termed as loose metric. Tests are performed on Synthetic Time Series (STS) with known lead-lag relationship and comparisons are done with other state-of-the-art models on the basis of significance and forecastability. The proposed technique gives the best results in both the tests. It finds paths which are all statistically significant, and its forecasts are closest to the target values. Then, we use the measure to study the topology evolution of the Foreign Exchange market, as the COVID-19 pandemic unfolds. Here, we study the FX currency prices of 29 prominent countries of the world. It is observed that as the crises unfold, all the currencies become strongly interlinked to each other. Also, USA Dollar starts playing even more central role in the FX market. Finally, we mention several other application areas of the proposed technique for designing intelligent systems.