论文标题
转变的低差异设计也是否也低差异?
Is a Transformed Low Discrepancy Design Also Low Discrepancy?
论文作者
论文摘要
旨在匹配任意目标分布的实验设计通常是通过均匀实验设计的可变转换来构建的。逆分布函数就是这样的转换。差异是对任何设计的经验分布与其目标分布相匹配的程度的度量。本章解决了一个问题,即低差异均匀设计的变量转换是否会为所需的目标分布产生低差异设计。答案取决于用于定义各自差异的两个内核函数。如果这些内核满足某些条件,那么答案是肯定的。但是,由于实际原因,这些条件可能是不可取的。在这种情况下,低差异均匀设计的转换可能会产生具有较大差异的设计。我们说明了这可能发生的方式。我们还建议一些补救措施。一种补救措施是确保原始的统一设计具有最佳的一维投影,但是如果设计密集,或者换句话说,样本量之比除以随机变量的尺寸相对较大。另一种补救措施是将转换后的设计用作优化所需差异的坐标 - 交换算法的输入,这对密集或稀疏设计都起作用。通过模拟说明了这两种补救措施的有效性。
Experimental designs intended to match arbitrary target distributions are typically constructed via a variable transformation of a uniform experimental design. The inverse distribution function is one such transformation. The discrepancy is a measure of how well the empirical distribution of any design matches its target distribution. This chapter addresses the question of whether a variable transformation of a low discrepancy uniform design yields a low discrepancy design for the desired target distribution. The answer depends on the two kernel functions used to define the respective discrepancies. If these kernels satisfy certain conditions, then the answer is yes. However, these conditions may be undesirable for practical reasons. In such a case, the transformation of a low discrepancy uniform design may yield a design with a large discrepancy. We illustrate how this may occur. We also suggest some remedies. One remedy is to ensure that the original uniform design has optimal one-dimensional projection, but this remedy works best if the design is dense, or in other words, the ratio of sample size divided by the dimension of the random variable is relatively large. Another remedy is to use the transformed design as the input to a coordinate-exchange algorithm that optimizes the desired discrepancy, and this works for both dense or sparse designs. The effectiveness of these two remedies is illustrated via simulation.