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Needles, Haystacks, and Hidden Factors

机译:针,干草堆和隐藏因素

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Statistical factor modeling is often described as a way to identify commonality among returns in a financial market. Statistical models examine returns over many time periods, and from them identify relationships between and among the different assets, unlike fundamental factor models, which from the outset group assets that are likely to experience similar returns. Yet the statistical approach is better at finding some types of factors than others. Statistical factors generally work best with high-frequency return data, and even then may not pick up distinctions that apply to a relatively small subset of assets (such as distinctions associated with industry membership); they are most useful when they supplement fundamental factors. We see this in a case study that adds statistical factors to an MSCI Barra fundamental factor risk model.
机译:统计因子建模通常被描述为一种识别金融市场收益之间的共性的方法。统计模型检查许多时间段内的收益,并从中识别不同资产之间的关系,这与基本要素模型不同,基本因素模型从一开始就可能会获得相似收益的资产组中。然而,统计方法比其他方法更能发现某些类型的因素。统计因素通常最适合高频回报数据,即使那样,也可能无法获得适用于相对较小资产子集的区别(例如与行业成员身份相关的区别);它们在补充基本因素时最有用。我们在一个将统计因素添加到MSCI Barra基本因素风险模型的案例研究中看到了这一点。

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