We aim to provide an algorithm to predict the distribution of the critical times of financial bubbles employing a log-periodic power law. Our approach consists of a constrained genetic algorithm and an improved price gyration method, which generates an initial population of parameters using historical data for the genetic algorithm. The key enhancements of price gyration algorithm are (i) different window sizes for peak detection and (ii) a distance-based weighting approach for peak selection. Our results show a significant improvement in the prediction of financial crashes. The diagnostic analysis further demonstrates the accuracy, efficiency, and stability of our predictions
A large number of papers have been written by physicists documenting an alleged signature of imminen...
The study of critical phenomena that originated in the natural sciences has been extended to the fin...
This study proposes a framework to diagnose stock market crashes and predict the subsequent price re...
This bachelor thesis concerns itself with multiple objectives. First, to compare two apparently cont...
Stock market crashes were considered as an chaotic even for a long time. However, more than a decade...
AbstractBy combining (i) the economic theory of rational expectation bubbles, (ii) behavioral financ...
This article presents Log-Periodic Power Law and considers its usefulness as a forecasting tool on t...
A number of papers claim that a Log Periodic Power Law (LPPL) fitted to financial market bubbles tha...
Speculative bubbles have throughout the times foiled various scholars; many have tried to accurately...
Sornette et al. (1996), Sornette and Johansen (1997), Johansen et al. (2000) and Sornette (2003a) pr...
This paper intends to meet recent claims for the attainment of more rigorous statistical methodology...
Latex document of 38 pages including 16 eps figures and 3 tablesWe clarify the status of log-periodi...
A large number of papers have been written by physicists documenting an alleged signature of imminen...
We augment the existing literature using the Log-Periodic Power Law Singular (LPPLS) structures in t...
We augment the existing literature using the Log-Periodic Power Law Singular (LPPLS) structures in t...
A large number of papers have been written by physicists documenting an alleged signature of imminen...
The study of critical phenomena that originated in the natural sciences has been extended to the fin...
This study proposes a framework to diagnose stock market crashes and predict the subsequent price re...
This bachelor thesis concerns itself with multiple objectives. First, to compare two apparently cont...
Stock market crashes were considered as an chaotic even for a long time. However, more than a decade...
AbstractBy combining (i) the economic theory of rational expectation bubbles, (ii) behavioral financ...
This article presents Log-Periodic Power Law and considers its usefulness as a forecasting tool on t...
A number of papers claim that a Log Periodic Power Law (LPPL) fitted to financial market bubbles tha...
Speculative bubbles have throughout the times foiled various scholars; many have tried to accurately...
Sornette et al. (1996), Sornette and Johansen (1997), Johansen et al. (2000) and Sornette (2003a) pr...
This paper intends to meet recent claims for the attainment of more rigorous statistical methodology...
Latex document of 38 pages including 16 eps figures and 3 tablesWe clarify the status of log-periodi...
A large number of papers have been written by physicists documenting an alleged signature of imminen...
We augment the existing literature using the Log-Periodic Power Law Singular (LPPLS) structures in t...
We augment the existing literature using the Log-Periodic Power Law Singular (LPPLS) structures in t...
A large number of papers have been written by physicists documenting an alleged signature of imminen...
The study of critical phenomena that originated in the natural sciences has been extended to the fin...
This study proposes a framework to diagnose stock market crashes and predict the subsequent price re...