Journal article

Data generation processes and statistical management of interval data


Authors listBlanco-Fernández, A; Winker, P

Publication year2016

Pages475-494

JournalAStA Advances in Statistical Analysis

Volume number100

Issue number4

ISSN1863-8171

eISSN1863-818X

DOI Linkhttps://doi.org/10.1007/s10182-016-0274-z

PublisherSpringer


Abstract
Statistical methods for dealing with interval data have been developed for some time. Real intervals are the natural extension of real point values. They are commonly considered to generalize the nature of the experimental outcomes from the classical scenario to a more imprecise situation. Interval data have been mainly treated in the context of fuzzy models, as a particular case of increasing the level of imprecision of the data. However, specific methods to deal explicitly with interval data have also been developed. It is described which experimental settings might result in interval-valued data. Some of the major statistical procedures used to deal with interval data are presented. Given the quite different data generation processes resulting in interval data, it is discussed which method appears most appropriate for specific types of interval data. Some practical applications demonstrate the link between data generation processes, specific type of interval data, and statistical methods used for the analysis of these data.



Authors/Editors




Citation Styles

Harvard Citation styleBlanco-Fernández, A. and Winker, P. (2016) Data generation processes and statistical management of interval data, AStA Advances in Statistical Analysis, 100(4), pp. 475-494. https://doi.org/10.1007/s10182-016-0274-z

APA Citation styleBlanco-Fernández, A., & Winker, P. (2016). Data generation processes and statistical management of interval data. AStA Advances in Statistical Analysis. 100(4), 475-494. https://doi.org/10.1007/s10182-016-0274-z


Last updated on 2025-16-06 at 11:12