The estimation of daily volatility using high frequency data in the South African equity market / I.M. Pagel

Financial market volatility is central to the theory and practice of asset pricing, option pricing, asset allocation, portfolio selection, portfolio rebalancing and hedging strategies as well as various risk management applications. Most textbooks assume volatility to be constant; however in practic...

Full description

Bibliographic Details
Main Author: Pagel, Izabel Mari
Published: North-West University 2009
Online Access:http://hdl.handle.net/10394/1366
id ndltd-netd.ac.za-oai-union.ndltd.org-nwu-oai-dspace.nwu.ac.za-10394-1366
record_format oai_dc
spelling ndltd-netd.ac.za-oai-union.ndltd.org-nwu-oai-dspace.nwu.ac.za-10394-13662014-04-16T03:53:01ZThe estimation of daily volatility using high frequency data in the South African equity market / I.M. PagelPagel, Izabel MariFinancial market volatility is central to the theory and practice of asset pricing, option pricing, asset allocation, portfolio selection, portfolio rebalancing and hedging strategies as well as various risk management applications. Most textbooks assume volatility to be constant; however in practice this is a very dangerous assumption to make and has lead to a research program regarding the distributional and dynamic properties of financial markets. Given that financial markets display high speeds of adjustment, studies based upon daily observations may fail to capture information contained in intraday or high frequency market movements and until relatively recently the use of daily or equally spaced data was considered the highest meaningful sampling frequency for financial market data. Recently, the volatility modelling literature took a significant step forward. Andersen et al. (2001) proposed a new approach called 'realized' volatility that exploits the information in high frequency returns. Basically, the approach is to estimate daily volatility by taking the square root of the sum of the squared intraday returns which are sampled at very short intervals. We discuss several theoretical measures for volatility of which quadratic variation (QV), integrated variance (IV) and conditional variance (CV) are the most popular. Realized variance is a consistent estimator for QV and can approximate IV and CV under various conditions. GARCH models are only concerned with estimating CV.Thesis (M.Sc. (Risk Analysis))--North-West University, Potchefstroom Campus, 2006.North-West University2009-03-03T09:55:24Z2009-03-03T09:55:24Z2005Thesishttp://hdl.handle.net/10394/1366
collection NDLTD
sources NDLTD
description Financial market volatility is central to the theory and practice of asset pricing, option pricing, asset allocation, portfolio selection, portfolio rebalancing and hedging strategies as well as various risk management applications. Most textbooks assume volatility to be constant; however in practice this is a very dangerous assumption to make and has lead to a research program regarding the distributional and dynamic properties of financial markets. Given that financial markets display high speeds of adjustment, studies based upon daily observations may fail to capture information contained in intraday or high frequency market movements and until relatively recently the use of daily or equally spaced data was considered the highest meaningful sampling frequency for financial market data. Recently, the volatility modelling literature took a significant step forward. Andersen et al. (2001) proposed a new approach called 'realized' volatility that exploits the information in high frequency returns. Basically, the approach is to estimate daily volatility by taking the square root of the sum of the squared intraday returns which are sampled at very short intervals. We discuss several theoretical measures for volatility of which quadratic variation (QV), integrated variance (IV) and conditional variance (CV) are the most popular. Realized variance is a consistent estimator for QV and can approximate IV and CV under various conditions. GARCH models are only concerned with estimating CV. === Thesis (M.Sc. (Risk Analysis))--North-West University, Potchefstroom Campus, 2006.
author Pagel, Izabel Mari
spellingShingle Pagel, Izabel Mari
The estimation of daily volatility using high frequency data in the South African equity market / I.M. Pagel
author_facet Pagel, Izabel Mari
author_sort Pagel, Izabel Mari
title The estimation of daily volatility using high frequency data in the South African equity market / I.M. Pagel
title_short The estimation of daily volatility using high frequency data in the South African equity market / I.M. Pagel
title_full The estimation of daily volatility using high frequency data in the South African equity market / I.M. Pagel
title_fullStr The estimation of daily volatility using high frequency data in the South African equity market / I.M. Pagel
title_full_unstemmed The estimation of daily volatility using high frequency data in the South African equity market / I.M. Pagel
title_sort estimation of daily volatility using high frequency data in the south african equity market / i.m. pagel
publisher North-West University
publishDate 2009
url http://hdl.handle.net/10394/1366
work_keys_str_mv AT pagelizabelmari theestimationofdailyvolatilityusinghighfrequencydatainthesouthafricanequitymarketimpagel
AT pagelizabelmari estimationofdailyvolatilityusinghighfrequencydatainthesouthafricanequitymarketimpagel
_version_ 1716663454702501888