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Beyond the Central Tendency:Quantile Regression as a Tool in Quantitative Investing

机译:超越中心趋势:作为定量投资工具的分位数回归

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摘要

Quantitative investors frequently analyze factor performance using regression based on the familiar ordinary least squares approach. This is highly effective for understanding the central tendency within a dataset, but will often be less useful for assessing the behavior of datapoints close to the upper or lower extremes within a population. But from the perspective of active investors or risk managers, the data-points at the extremes may be precisely the ones of greatest interest. For such applications, a more appropriate methodology is quantile regression. The authors show how quantile regression represents an extension of the conventional ordinary least squares method, and present an empirical analysis of factor effectiveness applied to a universe of U.S. small-cap stocks in order to illustrate the insights offered by this technique.
机译:定量投资者经常基于熟悉的普通最小二乘法使用回归分析因子表现。这对于理解数据集中的集中趋势非常有效,但是对于评估总体中接近最高或最低极端的数据点的行为通常没有多大用处。但是从活跃的投资者或风险管理者的角度来看,极端的数据点可能恰恰是最令人感兴趣的数据点。对于此类应用,更合适的方法是分位数回归。作者展示了分位数回归如何代表常规普通最小二乘法的扩展,并提出了对应用于美国小盘股整体的因子有效性进行的经验分析,以说明此技术提供的见解。

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