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Forecasting realised volatility using ARFIMA and HAR models
Authors:Marwan Izzeldin  Vasileios Pappas  Mike Tsionas
Institution:1. Department of Economics, Lancaster University, Bailrigg LA1 4YX, UKORCID Iconhttps://orcid.org/0000-0003-1662-1584;2. Kent Business School, University of Kent, Canterbury ME4 4TE, UKORCID Iconhttps://orcid.org/0000-0003-1885-4832;3. Department of Economics, Lancaster University, Bailrigg LA1 4YX, UKORCID Iconhttps://orcid.org/0000-0001-7254-6166
Abstract:Recent literature provides mixed empirical evidence with respect to the forecasting performance of ARFIMA and HAR models. This paper compares the forecasting performance of both models using high frequency data of 100 stocks representing 10 business sectors for the period 2000-2010. We allow for different sectors, changing market conditions, variation in the sampling frequency and forecasting horizons. For the overall sample and using the 300 sec sampling frequency, the forecasting performance of both models is indistinguishable. However, differences arise under different market regimes, forecasting horizons and sampling frequencies. ARFIMA models are superior for the crisis and pre-crisis sub-samples. HAR forecasts are less sensitive to regime change and to longer forecasting horizons. Variations in forecasting performance could also be explained using differences in the levels of persistence underlying each model.
Keywords:High-frequency data  Market conditions  Market sectors  Realised variance  HAR  ARFIMA
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