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Volatility Modelling with High-Frequency Financial Data on a Continuous Time Scale

Research output: ThesisDoctoral Thesis

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Volatility Modelling with High-Frequency Financial Data on a Continuous Time Scale. / Sofronis, Georgios.
Lancaster University, 2023. 315 p.

Research output: ThesisDoctoral Thesis

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Sofronis G. Volatility Modelling with High-Frequency Financial Data on a Continuous Time Scale. Lancaster University, 2023. 315 p. doi: 10.17635/lancaster/thesis/2029

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@phdthesis{82e82cd47c9d4f63b1cc61b9cc9e6d1c,
title = "Volatility Modelling with High-Frequency Financial Data on a Continuous Time Scale",
abstract = "Financial volatility is the core of multiple sectors in finance. This work investigates different aspects of volatility using high-frequency data. High-frequency data offer a complete picture of the dynamics of the intraday patterns, contributing to a more preciseinference about these patterns. However, their complex structural form yields several challenges in the analysis for the practitioners. Our research takes place in both the univariate and multivariate space, meaning that we explore the data characteristics forevery asset separately and as a factor of interactions among the assets.In terms of the analysis in the univariate space, Chapters 2 and 4 develop some volatility estimators in discrete and continuous time scales, respectively. More specifically, we develop several estimators of the intraday volatility in Chapter 2 where eachestimator approximates the intraday volatility, exploiting different characteristics of the dataset. On the other hand, we consider an estimator of the daily volatility along with its theoretical framework in Chapter 4. Our simulation study shows that our estimator is superior to standard estimators of daily volatility when the variance of the noise incorporated in the intraday observations takes values of normal size.In the multivariate space, Chapter 3 studies whether we can decompose the daily volatility traits to some components, inferring the assets which drive these components the most. Also, we extend the relevant methodology to volatility estimates with highfrequency, as those provided by the estimators in Chapter 2. Through our proposed approach, we can deduce the stocks which present the highest variability as well as the intraday periods this variability is observed more intensely.In Chapter 5, we develop a technique for estimating the conditional dependence structure between the assets using the concept of graphical models. This chapter treats high-frequency data as functional data, allowing us to exploit their virtues to drawinferences about the assets{\textquoteright} conditional interdependencies.",
keywords = "High-frequency data, Financial volatility, Continuous time modeling",
author = "Georgios Sofronis",
year = "2023",
doi = "10.17635/lancaster/thesis/2029",
language = "English",
publisher = "Lancaster University",
school = "Lancaster University",

}

RIS

TY - BOOK

T1 - Volatility Modelling with High-Frequency Financial Data on a Continuous Time Scale

AU - Sofronis, Georgios

PY - 2023

Y1 - 2023

N2 - Financial volatility is the core of multiple sectors in finance. This work investigates different aspects of volatility using high-frequency data. High-frequency data offer a complete picture of the dynamics of the intraday patterns, contributing to a more preciseinference about these patterns. However, their complex structural form yields several challenges in the analysis for the practitioners. Our research takes place in both the univariate and multivariate space, meaning that we explore the data characteristics forevery asset separately and as a factor of interactions among the assets.In terms of the analysis in the univariate space, Chapters 2 and 4 develop some volatility estimators in discrete and continuous time scales, respectively. More specifically, we develop several estimators of the intraday volatility in Chapter 2 where eachestimator approximates the intraday volatility, exploiting different characteristics of the dataset. On the other hand, we consider an estimator of the daily volatility along with its theoretical framework in Chapter 4. Our simulation study shows that our estimator is superior to standard estimators of daily volatility when the variance of the noise incorporated in the intraday observations takes values of normal size.In the multivariate space, Chapter 3 studies whether we can decompose the daily volatility traits to some components, inferring the assets which drive these components the most. Also, we extend the relevant methodology to volatility estimates with highfrequency, as those provided by the estimators in Chapter 2. Through our proposed approach, we can deduce the stocks which present the highest variability as well as the intraday periods this variability is observed more intensely.In Chapter 5, we develop a technique for estimating the conditional dependence structure between the assets using the concept of graphical models. This chapter treats high-frequency data as functional data, allowing us to exploit their virtues to drawinferences about the assets’ conditional interdependencies.

AB - Financial volatility is the core of multiple sectors in finance. This work investigates different aspects of volatility using high-frequency data. High-frequency data offer a complete picture of the dynamics of the intraday patterns, contributing to a more preciseinference about these patterns. However, their complex structural form yields several challenges in the analysis for the practitioners. Our research takes place in both the univariate and multivariate space, meaning that we explore the data characteristics forevery asset separately and as a factor of interactions among the assets.In terms of the analysis in the univariate space, Chapters 2 and 4 develop some volatility estimators in discrete and continuous time scales, respectively. More specifically, we develop several estimators of the intraday volatility in Chapter 2 where eachestimator approximates the intraday volatility, exploiting different characteristics of the dataset. On the other hand, we consider an estimator of the daily volatility along with its theoretical framework in Chapter 4. Our simulation study shows that our estimator is superior to standard estimators of daily volatility when the variance of the noise incorporated in the intraday observations takes values of normal size.In the multivariate space, Chapter 3 studies whether we can decompose the daily volatility traits to some components, inferring the assets which drive these components the most. Also, we extend the relevant methodology to volatility estimates with highfrequency, as those provided by the estimators in Chapter 2. Through our proposed approach, we can deduce the stocks which present the highest variability as well as the intraday periods this variability is observed more intensely.In Chapter 5, we develop a technique for estimating the conditional dependence structure between the assets using the concept of graphical models. This chapter treats high-frequency data as functional data, allowing us to exploit their virtues to drawinferences about the assets’ conditional interdependencies.

KW - High-frequency data

KW - Financial volatility

KW - Continuous time modeling

U2 - 10.17635/lancaster/thesis/2029

DO - 10.17635/lancaster/thesis/2029

M3 - Doctoral Thesis

PB - Lancaster University

ER -