It is often desirable to summarise a probability measure on a space $X$ in terms of a mode, or MAP estimator, i.e.\ a point of maximum probability. Such points can be rigorously defined using masses of metric balls in the small-radius limit. However, the theory is not entirely straightforward: the literature contains multiple notions of mode and various examples of pathological measures that have no mode in any sense. Since the masses of balls induce natural orderings on the points of $X$, this article aims to shed light on some of the problems in non-parametric MAP estimation by taking an order-theoretic perspective, which appears to be a new one in the inverse problems community. This point of view opens up attractive proof strategies based upon the Cantor and Kuratowski intersection theorems; it also reveals that many of the pathologies arise from the distinction between greatest and maximal elements of an order, and from the existence of incomparable elements of $X$, which we show can be dense in $X$, even for an absolutely continuous measure on $X = \mathbb{R}$.
翻译:本文旨在通过偏序视角来提高非参数最大后验估计中的一些问题,偏序视角似乎是逆问题社区的一个新观点。该视角打开了基于Cantor和Kuratowski交集定理的有吸引力的证明策略。此外,它还揭示了许多病态问题产生的原因,这些原因包括偏序的最大和极大元素之间的区别,以及$X$中不可比元素的存在,即使对于$\mathbb{R}$ 上的绝对连续测度,这些不可比元素也可能分布在$X$ 中。最后,我们提供了一些不同模态概念的例子,以及没有任何匹配的模态的一些病态测量案例。