Probability density distributions of stock returns, market regimes, and financial risk measures

The probability density distribution of stock returns is crucial in financial modelling and the estimation of financial risk measures. Numerous papers have been devoted to finding the best-fit distributional specifications of stock returns but no consensus has been reached in answering the question...

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Main Author: Li, Yadong
Other Authors: Zalewska, Anna ; Giansante, Simone
Published: University of Bath 2018
Online Access:https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.767561
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spelling ndltd-bl.uk-oai-ethos.bl.uk-7675612019-03-14T03:35:23ZProbability density distributions of stock returns, market regimes, and financial risk measuresLi, YadongZalewska, Anna ; Giansante, Simone2018The probability density distribution of stock returns is crucial in financial modelling and the estimation of financial risk measures. Numerous papers have been devoted to finding the best-fit distributional specifications of stock returns but no consensus has been reached in answering the question of whether there is a unique distributional family that fits all markets and market conditions. Similarly, numerous papers have been devoted to modelling tail risk but no consensus has been reached with regard to which methods provide the most accurate and reliable estimates. This research brings these two strands of the literature together by investigating how distributional specifications differ between the bull and bear markets, and between the developed and the emerging stock exchanges. It also contributes to our understanding of how the knowledge of distributional specifications informs the discussion on the best method of the VaR and ES estimation. In its empirical part, this research investigates the probability density distributions of daily equity returns for 19 developed stock exchanges and 19 emerging stock exchanges. It considers the period of 01 January 2000 to 31 December 2016 and then separately for the bull and bear sub-periods. The results show that there are considerable differences in the probability density distributions for the developed and the emerging stock exchanges. Moreover, the probability density distributions of stock market returns change as the markets switch between the bull and the bear market regimes. These changes in the probability density distribution specifications impact on the values of VaR and ES. This research sheds light on the shortcomings of commonly used VaR and ES estimation methods such as Historical Simulation and Extreme Value Theory.University of Bathhttps://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.767561Electronic Thesis or Dissertation
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sources NDLTD
description The probability density distribution of stock returns is crucial in financial modelling and the estimation of financial risk measures. Numerous papers have been devoted to finding the best-fit distributional specifications of stock returns but no consensus has been reached in answering the question of whether there is a unique distributional family that fits all markets and market conditions. Similarly, numerous papers have been devoted to modelling tail risk but no consensus has been reached with regard to which methods provide the most accurate and reliable estimates. This research brings these two strands of the literature together by investigating how distributional specifications differ between the bull and bear markets, and between the developed and the emerging stock exchanges. It also contributes to our understanding of how the knowledge of distributional specifications informs the discussion on the best method of the VaR and ES estimation. In its empirical part, this research investigates the probability density distributions of daily equity returns for 19 developed stock exchanges and 19 emerging stock exchanges. It considers the period of 01 January 2000 to 31 December 2016 and then separately for the bull and bear sub-periods. The results show that there are considerable differences in the probability density distributions for the developed and the emerging stock exchanges. Moreover, the probability density distributions of stock market returns change as the markets switch between the bull and the bear market regimes. These changes in the probability density distribution specifications impact on the values of VaR and ES. This research sheds light on the shortcomings of commonly used VaR and ES estimation methods such as Historical Simulation and Extreme Value Theory.
author2 Zalewska, Anna ; Giansante, Simone
author_facet Zalewska, Anna ; Giansante, Simone
Li, Yadong
author Li, Yadong
spellingShingle Li, Yadong
Probability density distributions of stock returns, market regimes, and financial risk measures
author_sort Li, Yadong
title Probability density distributions of stock returns, market regimes, and financial risk measures
title_short Probability density distributions of stock returns, market regimes, and financial risk measures
title_full Probability density distributions of stock returns, market regimes, and financial risk measures
title_fullStr Probability density distributions of stock returns, market regimes, and financial risk measures
title_full_unstemmed Probability density distributions of stock returns, market regimes, and financial risk measures
title_sort probability density distributions of stock returns, market regimes, and financial risk measures
publisher University of Bath
publishDate 2018
url https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.767561
work_keys_str_mv AT liyadong probabilitydensitydistributionsofstockreturnsmarketregimesandfinancialriskmeasures
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