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Evaluating factor pricing models using high-frequency panels

机译:使用高频面板评估要素定价模型

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This paper develops a new framework and statistical tools to analyze stock returns using high-frequency data. We consider a continuous-time multifactor model via a continuous-time multivariate regression model incorporating realistic empirical features, such as persistent stochastic volatilities with leverage effects. We find that the conventional regression approach often leads to misleading and inconsistent test results when applied to high-frequency data. We overcome this by using samples collected at random intervals, which are set by the clock running inversely proportional to the market volatility. Our results show that the conventional pricing factors have difficulty in explaining the cross section of stock returns. In particular, we find that the size factor performs poorly in fitting the size-based portfolios, and the returns on the consumer industry have some explanatory power on the small growth stocks.
机译:本文开发了一个新的框架和统计工具,以使用高频数据分析股票收益。我们通过结合实际经验特征(例如具有杠杆效应的持续随机波动率)的连续时间多元回归模型来考虑连续时间多因素模型。我们发现,当将常规回归方法应用于高频数据时,通常会导致误导和不一致的测试结果。我们通过使用以随机间隔收集的样本克服了这一问题,这些间隔是由与市场波动性成反比的时钟设置的。我们的结果表明,传统的定价因素难以解释股票收益的横截面。尤其是,我们发现规模因素在拟合基于规模的投资组合方面表现不佳,而消费行业的回报对少量成长型股票具有一定的解释力。

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