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首页> 外文期刊>Journal of Econometrics >Business cycle asymmetries in stock returns: evidence from higher order moments and conditional densities
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Business cycle asymmetries in stock returns: evidence from higher order moments and conditional densities

机译:股票收益的商业周期不对称:来自更高阶矩和条件密度的证据

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摘要

Markov switching models with time-varying means, variances and mixing weights are applied to characterize business cycle variation in the probability distribution and higher order moments of stock returns. This allows us to provide a comprehensive characterization of risk that goes well beyond the mean and variance of returns. Several mixture models with different specifications of the state transition are compared and we propose a new mixture of Gaussian and student-t distributions that captures outliers in returns. The models produce very similar expected returns and volatilities but imply very different time series for conditional skewness, kurtosis and predictive density. Consistent with economic theory, the gains in predictive accuracy from considering two-state mixture models rather than a single-state specification are higher for small firms than for large firms.
机译:具有时变均值,方差和混合权重的马尔可夫切换模型用于表征概率分布和股票收益较高阶矩中的商业周期变化。这使我们能够对风险进行全面的描述,远远超过收益的均值和方差。比较了几种具有不同状态转换规范的混合模型,我们提出了一种新的高斯分布和学生t分布的混合模型,该模型可以捕获回报中的离群值。这些模型产生非常相似的预期收益率和波动率,但是对于条件偏斜,峰度和预测密度而言,它们意味着非常不同的时间序列。与经济理论一致,对于小公司而言,考虑到两种状态的混合模型而不是单状态的规范,其预测准确性的收益要高于大公司。

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