The concept of depth has proved very important for multivariate and functional data analysis, as it essentially acts as a surrogate for the notion a ranking of observations which is absent in more than one dimension. Motivated by the rapid development of technology, in particular the advent of `Big Data', we extend here that concept to general metric spaces, propose a natural depth measure and explore its properties as a statistical depth function. Working in a general metric space allows the depth to be tailored to the data at hand and to the ultimate goal of the analysis, a very desirable property given the polymorphic nature of modern data sets. This flexibility is thoroughly illustrated by several real data analyses.
翻译:实践证明,深度概念对于多变量和功能性数据分析非常重要,因为它基本上可以替代这个概念,即对不止一个方面都不存在的观测进行排序,由于技术的迅速发展,特别是“大数据”的出现,我们在此将这一概念扩大到一般的计量空间,提出自然深度测量,并探索其作为统计深度功能的特性。在一般的计量空间中工作,可以使深度适应手头的数据以及分析的最终目标,鉴于现代数据集的多元性,这是非常可取的属性。若干实际数据分析透彻地说明了这种灵活性。