Risk, return, and investor behavior in the Chinese equity market

This thesis comprises two chapters with a focus on volatility estimating, modeling and forecasting using intraday data in the Chinese stock market. The first chapter explores the performance of two types of estimators in volatility prediction: the realized volatility (RV) type and duration-based one...

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Main Author: Fei, Tianlun
Format: Thesis (University of Nottingham only)
Language:English
Published: 2020
Subjects:
Online Access:https://eprints.nottingham.ac.uk/59407/
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author Fei, Tianlun
author_facet Fei, Tianlun
author_sort Fei, Tianlun
building Nottingham Research Data Repository
collection Online Access
description This thesis comprises two chapters with a focus on volatility estimating, modeling and forecasting using intraday data in the Chinese stock market. The first chapter explores the performance of two types of estimators in volatility prediction: the realized volatility (RV) type and duration-based ones. This is motivated by the theoretical and empirical support for both categories of estimators that are distinct from each other. I use intraday data for 203 component stocks in the CSI 300 index and adopt a combination of volatility models and these two types of estimators to produce 1-, 5- and 22-day ahead forecasts. I show that, although empirically more efficient with US data, the duration-based volatility estimators fail to compete statistically with the traditional RV-type although in a portfolio setting both types of estimators generate similar economic value to a mean-variance investor. A comprehensive simulation exercise is undertaken to rationalize the poorer statistical performance of duration-based estimators. In the second chapter, I use daily and intraday data to examine the impact of crosssectional return dispersion on volatility forecasting in the Chinese equity market. I adopt traditional GARCH and HAR models and, by augmenting them with return dispersion measures, provide evidence that the return dispersion exhibits substantial information in describing the volatility dynamics by generating significantly lower forecasting errors at market and industry levels. Furthermore, the information content of the return dispersion tends to offer economic gain to a mean-variance utility investor. The findings are robust with respect to alternative volatility proxies and weighting scheme in constructing industry indices.
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format Thesis (University of Nottingham only)
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language English
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spelling nottingham-594072025-02-28T14:42:23Z https://eprints.nottingham.ac.uk/59407/ Risk, return, and investor behavior in the Chinese equity market Fei, Tianlun This thesis comprises two chapters with a focus on volatility estimating, modeling and forecasting using intraday data in the Chinese stock market. The first chapter explores the performance of two types of estimators in volatility prediction: the realized volatility (RV) type and duration-based ones. This is motivated by the theoretical and empirical support for both categories of estimators that are distinct from each other. I use intraday data for 203 component stocks in the CSI 300 index and adopt a combination of volatility models and these two types of estimators to produce 1-, 5- and 22-day ahead forecasts. I show that, although empirically more efficient with US data, the duration-based volatility estimators fail to compete statistically with the traditional RV-type although in a portfolio setting both types of estimators generate similar economic value to a mean-variance investor. A comprehensive simulation exercise is undertaken to rationalize the poorer statistical performance of duration-based estimators. In the second chapter, I use daily and intraday data to examine the impact of crosssectional return dispersion on volatility forecasting in the Chinese equity market. I adopt traditional GARCH and HAR models and, by augmenting them with return dispersion measures, provide evidence that the return dispersion exhibits substantial information in describing the volatility dynamics by generating significantly lower forecasting errors at market and industry levels. Furthermore, the information content of the return dispersion tends to offer economic gain to a mean-variance utility investor. The findings are robust with respect to alternative volatility proxies and weighting scheme in constructing industry indices. 2020-03 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en arr https://eprints.nottingham.ac.uk/59407/1/Thesis.pdf Fei, Tianlun (2020) Risk, return, and investor behavior in the Chinese equity market. PhD thesis, University of Nottingham. Duration-based Estimator; Return dispersion;
spellingShingle Duration-based Estimator; Return dispersion;
Fei, Tianlun
Risk, return, and investor behavior in the Chinese equity market
title Risk, return, and investor behavior in the Chinese equity market
title_full Risk, return, and investor behavior in the Chinese equity market
title_fullStr Risk, return, and investor behavior in the Chinese equity market
title_full_unstemmed Risk, return, and investor behavior in the Chinese equity market
title_short Risk, return, and investor behavior in the Chinese equity market
title_sort risk, return, and investor behavior in the chinese equity market
topic Duration-based Estimator; Return dispersion;
url https://eprints.nottingham.ac.uk/59407/