首页|Ordinal synchronization and typical states in high-frequency digital markets

Ordinal synchronization and typical states in high-frequency digital markets

扫码查看
© 2022 Elsevier B.V.In this paper we study Algorithmic High-Frequency Financial Markets as dynamical networks. After an individual analysis of 24 stocks of the US market during a trading year of fully automated transactions by means of ordinal pattern series, we define an information-theoretic measure of pairwise synchronization for time series which allows us to study this subset of the US market as a dynamical network. We apply to the resulting network a couple of clustering algorithms in order to detect collective market states, characterized by their degree of centralized or decentralized synchronicity. This collective analysis has shown to reproduce, classify and explain the anomalous behavior previously observed at the individual level. We also find two whole coherent seasons of highly centralized and decentralized synchronicity, respectively. Finally, we model these states dynamics through a simple Markov model.

Algorithmic tradingClusteringHigh-frequency tradingNetworksOrdinal patternsSynchronicity

Lopez Perez M.、Mansilla Corona R.

展开 >

Facultad de Ciencias Universidad Nacional Autónoma de Mexico

Centro de Investigaciones Interdisciplinarias en Ciencias y Humanidades Universidad Nacional Autónoma de Mexico

2022

Physica

Physica

ISSN:0378-4371
年,卷(期):2022.598
  • 59