峰度
偏斜
主成分分析
计量经济学
力矩(物理)
文件夹
组分(热力学)
库存(枪支)
独立成分分析
计算机科学
统计
数学
经济
金融经济学
人工智能
工程类
物理
热力学
机械工程
经典力学
作者
Éric Jondeau,Emmanuel Jurczenko,Michael Rockinger
标识
DOI:10.1080/07350015.2016.1216851
摘要
We describe a statistical technique, which we call Moment Component Analysis (MCA), that extends principal component analysis (PCA) to higher co-moments such as co-skewness and co-kurtosis. This method allows us to identify the factors that drive co-skewness and co-kurtosis structures across a large set of series. We illustrate MCA using 44 international stock markets sampled at weekly frequency from 1994 to 2014. We find that both the co-skewness and the co-kurtosis structures can be summarized with a small number of factors. Using a rolling window approach, we show that these co-moments convey useful information about market returns, for systemic risk measurement and portfolio allocation, complementary to the information extracted from a standard PCA or from an independent component analysis.
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