关于高维蒙特卡罗积分的一个注记

Yanbo Tang
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引用次数: 0

摘要

蒙特卡罗积分是一种常用的计算难解积分的方法,但通常被认为在计算高维积分时表现不佳。为了表明情况并非总是如此,我们通过允许积分的维数增加,使用来自高维统计文献的技术来检查蒙特卡罗积分。在此过程中,我们通过集中不等式导出了一些一般函数类近似的相对误差和绝对误差的非渐近界。我们提供了具体的例子,其中采样点数量的大小需要保证一个一致的估计在多项式和指数之间变化,并表明在理论上任意快或慢的速率是可能的。这证明了高维蒙特卡罗积分的行为是不均匀的。通过我们的方法,我们还获得了非渐近置信区间,无论采样点的数量如何,它都是有效的。
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A Note on Monte Carlo Integration in High Dimensions
Monte Carlo integration is a commonly used technique to compute intractable integrals and is typically thought to perform poorly for very high-dimensional integrals. To show that this is not always the case, we examine Monte Carlo integration using techniques from the high-dimensional statistics literature by allowing the dimension of the integral to increase. In doing so, we derive non-asymptotic bounds for the relative and absolute error of the approximation for some general classes of functions through concentration inequalities. We provide concrete examples in which the magnitude of the number of points sampled needed to guarantee a consistent estimate varies between polynomial to exponential, and show that in theory arbitrarily fast or slow rates are possible. This demonstrates that the behaviour of Monte Carlo integration in high dimensions is not uniform. Through our methods we also obtain non-asymptotic confidence intervals which are valid regardless of the number of points sampled.
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