Volatility estimation has become one of the core activities of financial analysts. At present, the majority of buy and sell operations are run by “computer traders” that use algorithms mainly based on volatility levels in the market. Several analyses argue that the recent “flash crash crisis” are the amplified consequence of volatility variations. Among the various methodologies proposed in literature, fractals are playing a major role in modeling financial series and, in particular, in analysing volatility characteristics. Following this line, we propose a stochastic approach using a random variable to represent the Hurst Exponent H. We adopt an iterative procedure to model H with a mixture of n Beta distributions, where the number of components will depend on the required modeling accuracy. We choose several types of financial market indexes and assets to evaluate the model and show that the proposed methodology can provide a deep insight into the volatility characteristics associated to each one of them.
Volatility analysis: a multifractional approach with mixtures of Beta distributions / Cadoni, Marinella Iole; Melis, Roberta; Trudda, Alessandro. - 2025/15:(2025), pp. 1-15.
Volatility analysis: a multifractional approach with mixtures of Beta distributions
Cadoni Marinella
;Melis Roberta;Trudda Alessandro
2025-01-01
Abstract
Volatility estimation has become one of the core activities of financial analysts. At present, the majority of buy and sell operations are run by “computer traders” that use algorithms mainly based on volatility levels in the market. Several analyses argue that the recent “flash crash crisis” are the amplified consequence of volatility variations. Among the various methodologies proposed in literature, fractals are playing a major role in modeling financial series and, in particular, in analysing volatility characteristics. Following this line, we propose a stochastic approach using a random variable to represent the Hurst Exponent H. We adopt an iterative procedure to model H with a mixture of n Beta distributions, where the number of components will depend on the required modeling accuracy. We choose several types of financial market indexes and assets to evaluate the model and show that the proposed methodology can provide a deep insight into the volatility characteristics associated to each one of them.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


