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DTSTART:20250330T010000
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DTSTART;TZID=Europe/Helsinki:20250626T110000
DTEND;TZID=Europe/Helsinki:20250626T120000
DTSTAMP:20260710T060037
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SUMMARY:Gilles DE TRUCHIS (University de Nanterre)  "Prediction of bubbles in presence of alpha-stable aggregates moving averages"
DESCRIPTION:Finance-Insurance\nTime: 11.00 am\nDate:26th of June 2025\nRoom 3001 \nGilles DE TRUCHIS (University de Nanterre) “Prediction of bubbles in presence of alpha-stable aggregates moving averages” \nAbstract : Financial markets frequently exhibit boom-and-bust cycles that are incompatible with standard linear time series models. While anticipative heavy-tailed linear processes offer a promising alternative for modeling such phenomena\, they impose uniform bubble patterns across different episodes\, contradicting empirical evidence. This paper introduces a new model based on $\alpha$-stable moving average aggregates that accommodates heterogeneous bubble dynamics. We establish the theoretical properties of this model\, demonstrating that it admits a semi-norm representation on a unit cylinder\, thereby enabling the prediction of extreme trajectories with varying growth dynamics. We develop a minimum distance estimation procedure based on the joint characteristic function and establish its asymptotic properties. Monte Carlo simulations confirm the estimator’s good finite-sample performance across various specifications. Our empirical application to the CBOE Crude Oil ETF Volatility Index successfully decomposes observed volatility dynamics into distinct components with different persistence properties\, revealing that what appears as a single bubble episode actually consists of multiple superimposed processes with heterogeneous growth rates and crash probabilities.\n \nOrganizers:  Jean-David FERMANIAN \n  \n
URL:https://crest.science/event/gilles-de-truchis-university-de-nanterre-t-b-a/
CATEGORIES:Finance-Insurance,Seminars
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