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日内市场可预测性:一种机器学习方法

Intraday Market Predictability: A Machine Learning Approach

Journal of Financial Econometrics · 2021
被引 13
人大 BABS 3

中文导读

利用机器学习模型对5分钟高频股票收益进行预测,发现集成模型能产生显著的经济收益(夏普比率0.98),且可预测性受交易者资本流动速度影响。

Abstract

Abstract Conducting, to our knowledge, the largest study ever of 5-min equity market returns using state-of-the-art machine learning models trained on the cross-section of lagged market index constituent returns, we show that regularized linear models and nonlinear tree-based models yield significant market return predictability. Ensemble models perform the best across time and their predictability translates into economically significant Sharpe ratios of 0.98 after transaction costs. These results provide strong evidence that intraday market returns are predictable during short time horizons, beyond what can be explained by transaction costs. Furthermore, we show that constituent returns hold significant predictive information that is not contained in market returns or in price trend and liquidity characteristics. Consistent with the hypothesis that predictability is driven by slow-moving trader capital, predictability decreased post-decimalization, and market returns are more predictable during the middle of the day, on days with high volatility or illiquidity, and in financial crisis periods.

金融经济学机器学习市场微观结构资产定价