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A Topologically Valid Definition of Depth for Functional Data
Author(s) -
Alicia Nieto-Reyes,
Heather Battey
Publication year - 2016
Publication title -
statistical science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.204
H-Index - 108
eISSN - 2168-8745
pISSN - 0883-4237
DOI - 10.1214/15-sts532
Subject(s) - observability , computer science , smoothness , robustness (evolution) , multivariate statistics , basis (linear algebra) , mathematics , contiguity , theoretical computer science , algorithm , machine learning , geometry , mathematical analysis , biochemistry , chemistry , gene , operating system
The main focus of this work is on providing a formal definition of statistical depth for functional data on the basis of six properties, recognising topological features such as continuity, smoothness and contiguity. Amongst our depth defining properties is one that addresses the delicate challenge of inherent partial observability of functional data, with fulfillment giving rise to a minimal guarantee on the performance of the empirical depth beyond the idealised and practically infeasible case of full observability. As an incidental product, functional depths satisfying our definition achieve a robustness that is commonly ascribed to depth, despite the absence of a formal guarantee in the multivariate definition of depth. We demonstrate the fulfillment or otherwise of our properties for six widely used functional depth proposals, thereby providing a systematic basis for selection of a depth function

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