Modified Profile Likelihood Inference and Interval Forecast of the Burst of Financial Bubbles
Vladimir Filimonov, Guilherme Demos, Didier Sornette

TL;DR
This paper introduces a modified profile likelihood method for more stable and accurate interval estimation of the critical time of financial bubbles, improving calibration of the LPPLS model and reducing local extrema in likelihood landscapes.
Contribution
It develops a rigorous likelihood inference approach for the LPPLS model, providing interval estimates for bubble burst time and nuisance parameters, and enhances calibration stability.
Findings
Reduces local extrema in likelihood landscapes
Provides interval estimates for critical bubble time
Successfully tested on synthetic and historical data
Abstract
We present a detailed methodological study of the application of the modified profile likelihood method for the calibration of nonlinear financial models characterised by a large number of parameters. We apply the general approach to the Log-Periodic Power Law Singularity (LPPLS) model of financial bubbles. This model is particularly relevant because one of its parameters, the critical time signalling the burst of the bubble, is arguably the target of choice for dynamical risk management. However, previous calibrations of the LPPLS model have shown that the estimation of is in general quite unstable. Here, we provide a rigorous likelihood inference approach to determine , which takes into account the impact of the other nonlinear (so-called "nuisance") parameters for the correct adjustment of the uncertainty on . This provides a rigorous interval estimation for the…
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