论文标题

网络几何和市场不稳定

Network geometry and market instability

论文作者

Samal, Areejit, Pharasi, Hirdesh K., Ramaia, Sarath Jyotsna, Kannan, Harish, Saucan, Emil, Jost, Jürgen, Chakraborti, Anirban

论文摘要

金融市场的复杂性是由代理商交易股票之间的战略互动引起的,这些股票以股票价格之间充满活力的相关模式的形式体现出来。在过去的几十年中,复杂的金融市场经常被表示为网络,其相互作用的节点是股票,并由表示相关优势的边缘连接。但是,我们通常会在三个或多个节点组中发生相互作用,而这些相互作用不能简单地通过成对相互作用来描述,但是我们还需要考虑这些相互作用之间的关系。直到最近,研究人员才开始关注复杂金融系统的高阶架构,这可以显着增强我们估计系统风险的能力,并在市场效率方面衡量金融系统的鲁棒性。几何启发的网络测量方法,例如Ollivier-Ricci曲率和Forman-Ricci曲率,可用于捕获网络脆弱性并连续监视财务动态。在这里,我们探讨了这种离散的RICCI曲率在表征金融系统结构中的实用性,并进一步评估它们是市场不稳定的通用指标。为此,我们研究了包括美国标准普尔500标准普尔500号的一组股票和日本Nikkei-225的每日收益,并监视以边缘为中心的网络曲率的变化。我们发现,不同的几何措施很好地捕捉了市场的系统级特征,因此我们可以区分正常或“商业 - 通常”时期和所有主要市场崩溃。这对于金融系统的战略设计和规范市场以解决金融不稳定性可能非常有用。

The complexity of financial markets arise from the strategic interactions among agents trading stocks, which manifest in the form of vibrant correlation patterns among stock prices. Over the past few decades, complex financial markets have often been represented as networks whose interacting pairs of nodes are stocks, connected by edges that signify the correlation strengths. However, we often have interactions that occur in groups of three or more nodes, and these cannot be described simply by pairwise interactions but we also need to take the relations between these interactions into account. Only recently, researchers have started devoting attention to the higher-order architecture of complex financial systems, that can significantly enhance our ability to estimate systemic risk as well as measure the robustness of financial systems in terms of market efficiency. Geometry-inspired network measures, such as the Ollivier-Ricci curvature and Forman-Ricci curvature, can be used to capture the network fragility and continuously monitor financial dynamics. Here, we explore the utility of such discrete Ricci curvatures in characterizing the structure of financial systems, and further, evaluate them as generic indicators of the market instability. For this purpose, we examine the daily returns from a set of stocks comprising the USA S&P-500 and the Japanese Nikkei-225 over a 32-year period, and monitor the changes in the edge-centric network curvatures. We find that the different geometric measures capture well the system-level features of the market and hence we can distinguish between the normal or `business-as-usual' periods and all the major market crashes. This can be very useful in strategic designing of financial systems and regulating the markets in order to tackle financial instabilities.

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