Efficient Multi-Change Point Analysis to Decode Economic Crisis Information from the S&P500 Mean Market CorrelationOpen Access

Heßler, Martin; Wand, Tobias; Kamps, Oliver

Research article (journal) | Peer reviewed

Abstract

Identifying macroeconomic events that are responsible for dramatic changes of economy is of particular relevance to understanding the overall economic dynamics. We introduce an open-source available efficient Python implementation of a Bayesian multi-trend change point analysis, which solves significant memory and computing time limitations to extract crisis information from a correlation metric. Therefore, we focus on the recently investigated S&P500 mean market correlation in a period of roughly 20 years that includes the dot-com bubble, the global financial crisis, and the Euro crisis. The analysis is performed two-fold: first, in retrospect on the whole dataset and second, in an online adaptive manner in pre-crisis segments. The online sensitivity horizon is roughly determined to be 80 up to 100 trading days after a crisis onset. A detailed comparison to global economic events supports the interpretation of the mean market correlation as an informative macroeconomic measure by a rather good agreement of change point distributions and major crisis events. Furthermore, the results hint at the importance of the U.S. housing bubble as a trigger of the global financial crisis, provide new evidence for the general reasoning of locally (meta)stable economic states, and could work as a comparative impact rating of specific economic events.

Details about the publication

JournalEntropy
Volume25
Issue9
Article number1265
StatusPublished
Release year2023 (26/08/2023)
Language in which the publication is writtenEnglish
DOI10.3390/e25091265
Link to the full texthttps://doi.org/10.3390/e25091265
KeywordsBayesian multi-change point analysis; linear trend segment fit; computationally efficient open-source python implementation; S&P500; mean market correlation; market mode; market factor; economic crises; econophysics

Authors from the University of Münster

Heßler, Martin
Center for Data Science and Complexity (CDSC)
Kamps, Oliver
Center for Data Science and Complexity (CDSC)
Wand, Tobias
Center for Data Science and Complexity (CDSC)