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On the effects of dimension reduction techniques on some high-dimensional problems in finance

机译:关于降维技术对金融中某些高维问题的影响

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Many problems in finance can be formulated as high-dimensional integrals, which are often attacked by quasi-Monte Carlo (QMC) algorithms. To enhance QMC algorithms, dimension reduction techniques, such as the Brownian bridge (BB) and principal component analysis (PCA), are used to reduce the effective dimension. This paper explores in depth the effects of these techniques on the dimension structure of some typical high-dimensional problems from finance: the pricing of path-dependent options and bond valuation according to term structure models. By deriving explicit expressions for the underlying integrands and the associated weights that control the relative importance of different variables, and by investigating the variance ratios, the effective dimensions, the mean dimension, and their limiting behavior as the nominal dimension tends to infinity, we show theoretically and empirically how and to what extent the BB and PCA algorithms change the dimension structure (including the degree of additivity) of the underlying functions. They change the functions to be strongly weighted and substantially reduce the effective dimensions and the mean dimension; and they enhance the degree of additivity, which is particularly important for QMC. Moreover, the resulting functions are of low effective dimension. not only in the superposition sense, but also in the truncation sense. The variance ratios, the effective dimensions, and the mean dimension associated with these techniques are very insensitive to the nominal dimension (they are essentially constant), which highlights the possibility of removing the curse of dimensionality when dimension reduction techniques are used in combination with QMC. A counterexample is also shown for which the BB and PCA may increase the effective dimension. The investigation provides further insight into the effects of dimension reduction techniques.
机译:金融中的许多问题都可以表述为高维积分,而高维积分经常受到准蒙特卡洛(QMC)算法的攻击。为了增强QMC算法,使用降维技术(例如布朗桥(BB)和主成分分析(PCA))来降低有效维。本文深入探讨了这些技术对金融中一些典型的高维度问题的维度结构的影响:路径选择权的定价和根据期限结构模型的债券估值。通过推导用于控制不同变量的相对重要性的基础被积分体和相关权重的显式表达式,并研究方差比,有效维数,平均维数及其随着名义维数趋于无穷大的限制行为,我们证明了在理论上和经验上,BB和PCA算法如何以及在多大程度上改变了基础函数的维结构(包括可加性程度)。它们改变了功能,使其具有很强的权重,并大大减小了有效尺寸和平均尺寸;并且它们提高了可加性的程度,这对于QMC尤其重要。而且,所产生的功能的有效尺寸较低。不仅在叠加意义上,而且在截断意义上。与这些技术相关的方差比,有效尺寸和平均尺寸对标称尺寸非常不敏感(它们本质上是恒定的),这突出显示了当将尺寸缩减技术与QMC结合使用时,消除尺寸诅咒的可能性。还显示了一个反例,BB和PCA可能会增加有效尺寸。该调查可进一步了解降维技术的效果。

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