Weak Convergence of Topological Measures

被引:0
作者
Svetlana V. Butler
机构
[1] University of California,Department of Mathematics
[2] Santa Barbara,undefined
来源
Journal of Theoretical Probability | 2022年 / 35卷
关键词
Weak convergence; Topological measure; Aleksandrov’s theorem; Prokhorov’s theorem; Prokhorov and Kantorovich–Rubenstein metrics; Dense subset; 60B10; 60B05; 28A33; 28C15;
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中图分类号
学科分类号
摘要
Topological measures and deficient topological measures are defined on open and closed subsets of a topological space, generalize regular Borel measures, and correspond to (nonlinear in general) functionals that are linear on singly generated subalgebras or singly generated cones of functions. They lack subadditivity, and many standard techniques of measure theory and functional analysis do not apply to them. Nevertheless, we show that many classical results of probability theory hold for topological and deficient topological measures. In particular, we prove a version of Aleksandrov’s theorem for equivalent definitions of weak convergence of deficient topological measures. We also prove a version of Prokhorov’s theorem which relates the existence of a weakly convergent subsequence in any sequence in a family of topological measures to the characteristics of being a uniformly bounded in variation and uniformly tight family. We define Prokhorov and Kantorovich–Rubenstein metrics and show that convergence in either of them implies weak convergence of (deficient) topological measures on metric spaces. We also generalize many known results about various dense and nowhere dense subsets of deficient topological measures. The present paper constitutes a necessary step to further research in probability theory and its applications in the context of (deficient) topological measures and corresponding nonlinear functionals.
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页码:1614 / 1639
页数:25
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