Econometrics——Tian Xie(2019):Forecast Bitcoin Volatility with Least Squares Model Averaging

发布者:王开发布时间:2020-12-15浏览次数:180

Abstract:

In this paper, we study forecasting problems of Bitcoin-realized volatility computed on data from the largest crypto exchange—Binance. Given the unique features of the crypto asset market, we find that conventional regression models exhibit strong model specification uncertainty. To circumvent this issue, we suggest using least squares model-averaging methods to model and forecast Bitcoin volatility. The empirical results demonstrate that least squares model-averaging methods in general outperform many other conventional regression models that ignore specification uncertainty.