Investment disputes and their explicit role in option market uncertainty and overall risk instability

Computational Management Science - Tập 20 - Trang 1-25 - 2023
Zdeněk Drábek1, Miloš Kopa2, Matúš Maciak2, Michal Pešta2, Sebastiano Vitali3
1CERGE-EI, Charles University, Prague, Czech Republic
2Faculty of Mathematics and Physics, Department of Probability and Mathematical Statistics, Charles University, Prague, Czech Republic
3Department of Economics, University of Bergamo, Bergamo, Italy

Tóm tắt

We propose a methodological approach for capturing and analyzing the impacts of investment disputes on option markets. A dispute submission typically brings in unspecified uncertainty and additional risk. The implied volatility of options is shown to reflect such effects. However, nontrivial caution and nonstandard statistical techniques are needed to analyze them appropriately. Artificial options with a constant (over time) maturity are introduced to emphasize these effects. A panel data representation of artificial implied volatility smiles is used to ensure the overall model flexibility, transparency, and its practical interpretability. Finally, a stochastically valid changepoint detection procedure is adopted to reveal significant impacts of an investment dispute on the overall riskiness and the stock price evolution. The results show significant impacts of the first tribunal meeting and the first procedural order of the disputes under consideration.

Tài liệu tham khảo

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