Volatility forecasting and volatility-timing strategies: A machine learning approach
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초록

Recent increases in stock price volatility have generated renewed interest in volatility-timing strategies. Based on high-dimensional models including machine learning, we predict stock market volatility and apply them to improve the performance of volatility-timing portfolios. Using various evaluation methods, we verify that those machine learning models have better prediction performances relative to the standard volatility models. Asset allocation results suggest that volatility-timing portfolios constructed using machine learning models tend to outperform the market, with higher average returns during the volatile market period. Our empirical evidence supports the application of machine learning in the construction of volatility-timing portfolios. © 2025 Elsevier B.V.

키워드

Asset allocationMachine learningRisk managementVolatility forecastingVolatility-timing portfolioSTOCK-MARKET VOLATILITYSTOCHASTIC VOLATILITYREALIZED VOLATILITYINVESTOR SENTIMENTCROSS-SECTIONPREDICTIVE REGRESSIONSMODEL SELECTIONECONOMIC VALUELONG-MEMORYRETURNS
제목
Volatility forecasting and volatility-timing strategies: A machine learning approach
저자
Chun, DohyunCho, HoonRyu, Doojin
DOI
10.1016/j.ribaf.2024.102723
발행일
2025-03
유형
Article
저널명
Research in International Business and Finance
75