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首页> 外文期刊>The review of financial studies >Parametric Portfolio Policies: Exploiting Characteristics in the Cross-Section of Equity Returns
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Parametric Portfolio Policies: Exploiting Characteristics in the Cross-Section of Equity Returns

机译:参数组合策略:股票收益横截面中的特征挖掘

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摘要

We propose a novel approach to optimizing portfolios with large numbers of assets. We model directly the portfolio weight in each asset as a function of the asset's characteristics. The coefficients of this function are found by optimizing the investor's average utility of the portfolio's return over the sample period. Our approach is computationally simple and easily modified and extended to capture the effect of transaction costs, for example, produces sensible portfolio weights, and offers robust performance in and out of sample. In contrast, the traditional approach of first modeling the joint distribution of returns and then solving for the corresponding optimal portfolio weights is not only difficult to implement for a large number of assets but also yields notoriously noisy and unstable results. We present an empirical implementation for the universe of all stocks in the CRSP-Compustat data set, exploiting the size, value, and momentum anomalies.
机译:我们提出了一种新颖的方法来优化具有大量资产的投资组合。我们直接根据资产特征对每个资产的投资组合权重进行建模。通过优化样本期内投资者对投资组合收益的平均效用进行优化,可以找到该函数的系数。我们的方法计算简单,易于修改和扩展,以捕获交易成本的影响,例如,产生合理的投资组合权重,并在样本内和样本外提供强大的性能。相比之下,传统的方法是先对收益的联合分布进行建模,然后求解相应的最优投资组合权重,这不仅难以对大量资产实施,而且还产生嘈杂且不稳定的结果。在CRSP-Compustat数据集中,我们利用大小,价值和动量异常来为所有股票的整体提供经验实现。

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