Hidden Markov models και οι εφαρμογές τους στα χρηματοοικονομικά

Abstract

Hidden Markov Models, usually referred to as HMMs, are one of the most successful concepts in statistical modeling conceived and analyzed in the last 40 years. They belong to the stochastic mixture models family and have been broadly implemented in numerous sectors to address the problem of data model fitting and forecasting. Their structure usually is comprised by an observed sequence which is conditioned on an underlying hidden (unobserved) process. This way HMMs provide flexibility to address various complicated problems and can be implemented for modeling univariate and multivariate financial time series. Moreover, based on current literature, economic variables exhibit patterns dependent on different economic regimes which can be successfully captured by HMMs. Their parsimonious structure and attractive properties along with the existence of efficient algorithms for their estimation were the main drivers for the selection of HMM as the main topic of this thesis. Consequently, in t ...
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DOI
10.12681/eadd/36701
Handle URL
http://hdl.handle.net/10442/hedi/36701
ND
36701
Alternative title
Hidden Markov models and their applications in finance
Author
Petropoulos, Anastasios (Father's name: Christos)
Date
2015
Degree Grantor
University of the Aegean
Committee members
Ξανθόπουλος Στέλιος
Γιαννακόπουλος Αθανάσιος
Χατζής Σωτήριος
Τσιμήκας Τζων
Χατζησπύρος Σπύρος
Μαραγκουδάκης Εμμανουήλ
Κυριακίδης Επαμεινώνδας
Discipline
Natural SciencesMathematics
Social SciencesEconomics and Business
Keywords
Corporate credit rating; Hidden Markov model; Student’s-t distribution; Expectation - Maximization; Basel framework; Statistical machine learning; Temporal dynamics; Variable order; Dependence jumps
Country
Greece
Language
Greek
Description
204 σ., tbls., fig., ch.
Rights and terms of use
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