预测存在日内周期性的已实现方差

IF 3.6 2区 经济学 Q1 BUSINESS, FINANCE Journal of Banking & Finance Pub Date : 2024-11-23 DOI:10.1016/j.jbankfin.2024.107342
Ana Maria H. Dumitru , Rodrigo Hizmeri , Marwan Izzeldin
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引用次数: 0

摘要

本文利用异质自回归模型(HAR)框架研究了日内周期性对预测已实现波动率的影响。我们发现,周期性会扩大已实现波动率的方差,并使跳跃估计器产生偏差。这种综合效应会对预测产生不利影响。为了解决这个问题,我们提出了一个周期性调整的 HAR 模型,即 HARP,其中的预测因子是根据周期性过滤后的数据构建的。我们通过经验(使用 2000-2020 年期间来自不同商业部门的 30 只股票和 SPY)和蒙特卡罗模拟证明,HARP 模型在所有预测期限内都能产生明显更好的预测结果。我们还证明,在估算方差风险溢价时对周期性进行调整可提高收益预测能力。
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Forecasting the realized variance in the presence of intraday periodicity
This paper examines the impact of intraday periodicity on forecasting realized volatility using a heterogeneous autoregressive model (HAR) framework. We show that periodicity inflates the variance of the realized volatility and biases jump estimators. This combined effect adversely affects forecasting. To account for this, we propose a periodicity-adjusted HAR model, HARP, where predictors are constructed from the periodicity-filtered data. We demonstrate empirically (using 30 stocks from various business sectors and the SPY for the period 2000–2020) and via Monte Carlo simulations that the HARP models produce significantly better forecasts across all forecasting horizons. We also show that adjusting for periodicity when estimating the variance risk premium improves return predictability.
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来源期刊
CiteScore
6.40
自引率
5.40%
发文量
262
期刊介绍: The Journal of Banking and Finance (JBF) publishes theoretical and empirical research papers spanning all the major research fields in finance and banking. The aim of the Journal of Banking and Finance is to provide an outlet for the increasing flow of scholarly research concerning financial institutions and the money and capital markets within which they function. The Journal''s emphasis is on theoretical developments and their implementation, empirical, applied, and policy-oriented research in banking and other domestic and international financial institutions and markets. The Journal''s purpose is to improve communications between, and within, the academic and other research communities and policymakers and operational decision makers at financial institutions - private and public, national and international, and their regulators. The Journal is one of the largest Finance journals, with approximately 1500 new submissions per year, mainly in the following areas: Asset Management; Asset Pricing; Banking (Efficiency, Regulation, Risk Management, Solvency); Behavioural Finance; Capital Structure; Corporate Finance; Corporate Governance; Derivative Pricing and Hedging; Distribution Forecasting with Financial Applications; Entrepreneurial Finance; Empirical Finance; Financial Economics; Financial Markets (Alternative, Bonds, Currency, Commodity, Derivatives, Equity, Energy, Real Estate); FinTech; Fund Management; General Equilibrium Models; High-Frequency Trading; Intermediation; International Finance; Hedge Funds; Investments; Liquidity; Market Efficiency; Market Microstructure; Mergers and Acquisitions; Networks; Performance Analysis; Political Risk; Portfolio Optimization; Regulation of Financial Markets and Institutions; Risk Management and Analysis; Systemic Risk; Term Structure Models; Venture Capital.
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