Modelling financial returns with mixtures of generalized normal distributions
Pierdomenico Duttilo

TL;DR
This thesis develops advanced mixture models based on generalized normal distributions to better analyze and predict financial returns, addressing estimation challenges and introducing new constrained and hidden Markov models.
Contribution
It introduces novel estimation algorithms, constrained mixture models, and hidden Markov models for financial return analysis, improving interpretability and capturing dynamic market behaviors.
Findings
Enhanced estimation algorithms for mixture models
Improved modeling of financial market turmoil
Dynamic models capturing return volatility
Abstract
This PhD Thesis presents an investigation into the analysis of financial returns using mixture models, focusing on mixtures of generalized normal distributions (MGND) and their extensions. The study addresses several critical issues encountered in the estimation process and proposes innovative solutions to enhance accuracy and efficiency. In Chapter 2, the focus lies on the MGND model and its estimation via expectation conditional maximization (ECM) and generalized expectation maximization (GEM) algorithms. A thorough exploration reveals a degeneracy issue when estimating the shape parameter. Several algorithms are proposed to overcome this critical issue. Chapter 3 extends the theoretical perspective by applying the MGND model on several stock market indices. A two-step approach is proposed for identifying turmoil days and estimating returns and volatility. Chapter 4 introduces…
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Taxonomy
TopicsBayesian Methods and Mixture Models
MethodsFocus
