Evaluating Volatility and Interval Forecasts

A widely used approach to evaluating volatility forecasts uses a regression framework which measures the bias and variance of the forecast. We show that the associated test for bias is inappropriate before introducing a more suitable procedure which is based on the test for bias in a conditional mea...

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Bibliographic Details
Main Author: Taylor, J
Format: Journal article
Published: 1999
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author Taylor, J
author_facet Taylor, J
author_sort Taylor, J
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description A widely used approach to evaluating volatility forecasts uses a regression framework which measures the bias and variance of the forecast. We show that the associated test for bias is inappropriate before introducing a more suitable procedure which is based on the test for bias in a conditional mean forecast. Although volatility has been the most common measure of the variability in a financial time series, in many situations confidence interval forecasts are required. We consider the evaluation of interval forecasts and present a regression-based procedure which uses quantile regression to assess quantile estimator bias and variance. We use exchange rate data to illustrate the proposal by evaluating seven quantile estimators, one of which is a new non-parametric autoregressive conditional heteroscedasticity quantile estimator. The empirical analysis shows that the new evaluation procedure provides useful insight into the quality of quantile estimators.
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spelling oxford-uuid:9529c783-32d8-457b-b863-fb95e23fdd6e2022-03-26T23:44:16ZEvaluating Volatility and Interval ForecastsJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:9529c783-32d8-457b-b863-fb95e23fdd6eSaïd Business School - Eureka1999Taylor, JA widely used approach to evaluating volatility forecasts uses a regression framework which measures the bias and variance of the forecast. We show that the associated test for bias is inappropriate before introducing a more suitable procedure which is based on the test for bias in a conditional mean forecast. Although volatility has been the most common measure of the variability in a financial time series, in many situations confidence interval forecasts are required. We consider the evaluation of interval forecasts and present a regression-based procedure which uses quantile regression to assess quantile estimator bias and variance. We use exchange rate data to illustrate the proposal by evaluating seven quantile estimators, one of which is a new non-parametric autoregressive conditional heteroscedasticity quantile estimator. The empirical analysis shows that the new evaluation procedure provides useful insight into the quality of quantile estimators.
spellingShingle Taylor, J
Evaluating Volatility and Interval Forecasts
title Evaluating Volatility and Interval Forecasts
title_full Evaluating Volatility and Interval Forecasts
title_fullStr Evaluating Volatility and Interval Forecasts
title_full_unstemmed Evaluating Volatility and Interval Forecasts
title_short Evaluating Volatility and Interval Forecasts
title_sort evaluating volatility and interval forecasts
work_keys_str_mv AT taylorj evaluatingvolatilityandintervalforecasts