Affiliation:
1. Department of Mathematics & Statistics, Faculty of Science, Mu’tah university, Al-Karak, Jordan
Abstract
This study?s main goal is to define approximate statistical convergence in
spaces with probabilistic norms. The idea of convergence in random 2-normed
space is more generalized as a result of our demonstrations of some
fundamental features and examples of convergence in linear spaces with
norms. More specifically, we demonstrate the findings for sets of
statistical limit points and sets of cluster points of approximate
statistically convergent sequences in these spaces. Additionally, we extend
the idea of rough convergence by applying the idea of ideals, which
automatically expands the original ideas of rough statistical convergence
and rough convergence. We define the collection of rough ideal limit points
and demonstrate a number of outcomes related to this collection.
Publisher
National Library of Serbia
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