Economic state classification and portfolio optimisation with application to stagflationary environments
Nick James, Max Menzies, Kevin Chin

TL;DR
This paper develops a novel framework for classifying economic states and optimizing portfolios in stagflationary environments, using advanced mathematical techniques on multivariate economic time series.
Contribution
It introduces a new algorithm for economic state classification and applies it to portfolio optimization during economic uncertainty.
Findings
Identified key economic states based on inflation and growth behaviors.
Demonstrated effective portfolio strategies for risk-adjusted returns in stagflation.
Analyzed historical periods similar to current market conditions.
Abstract
Motivated by the current fears of a potentially stagflationary global economic environment, this paper uses new and recently introduced mathematical techniques to study multivariate time series pertaining to country inflation (CPI), economic growth (GDP) and equity index behaviours. We begin by assessing the temporal evolution among various economic phenomena, and complement this analysis with `economic driver analysis,' where we decouple country economic trajectories and determine what is most important in their association. Next, we study the temporal self-similarity of global inflation, growth and equity index returns to identify the most anomalous historic periods, and windows in the past that are most similar to current market dynamics. We then introduce a new algorithm to construct economic state classifications and compute an economic state integral, where countries are…
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