Cargando…

Sign-based methods in linear statistical models

For nonparametric statistics, the last half of this century was the time when rank-based methods originated, were vigorously developed, reached maturity, and received wide recognition. The rank-based approach in statistics consists in ranking the observed values and using only the ranks rather than...

Descripción completa

Detalles Bibliográficos
Autores principales: Boldin, M V, Simonova, G I, Tyurin, Yu N, Nikolaevich, I Uri
Lenguaje:eng
Publicado: American Mathematical Society 1997
Materias:
XX
Acceso en línea:http://cds.cern.ch/record/2754438
_version_ 1780969421456539648
author Boldin, M V
Simonova, G I
Tyurin, Yu N
Nikolaevich, I Uri
author_facet Boldin, M V
Simonova, G I
Tyurin, Yu N
Nikolaevich, I Uri
author_sort Boldin, M V
collection CERN
description For nonparametric statistics, the last half of this century was the time when rank-based methods originated, were vigorously developed, reached maturity, and received wide recognition. The rank-based approach in statistics consists in ranking the observed values and using only the ranks rather than the original numerical data. In fitting relationships to observed data, the ranks of residuals from the fitted dependence are used. The signed-based approach is based on the assumption that random errors take positive or negative values with equal probabilities. Under this assumption, the sign procedures are distribution-free. These procedures are robust to violations of model assumptions, for instance, to even a considerable number of gross errors in observations. In addition, sign procedures have fairly high relative asymptotic efficiency, in spite of the obvious loss of information incurred by the use of signs instead of the corresponding numerical values. In this work, sign-based methods in the framework of linear models are developed. In the first part of the book, there are linear and factor models involving independent observations. In the second part, linear models of time series, primarily autoregressive models, are considered.
id cern-2754438
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 1997
publisher American Mathematical Society
record_format invenio
spelling cern-27544382021-04-21T16:43:24Zhttp://cds.cern.ch/record/2754438engBoldin, M VSimonova, G ITyurin, Yu NNikolaevich, I UriSign-based methods in linear statistical modelsXXFor nonparametric statistics, the last half of this century was the time when rank-based methods originated, were vigorously developed, reached maturity, and received wide recognition. The rank-based approach in statistics consists in ranking the observed values and using only the ranks rather than the original numerical data. In fitting relationships to observed data, the ranks of residuals from the fitted dependence are used. The signed-based approach is based on the assumption that random errors take positive or negative values with equal probabilities. Under this assumption, the sign procedures are distribution-free. These procedures are robust to violations of model assumptions, for instance, to even a considerable number of gross errors in observations. In addition, sign procedures have fairly high relative asymptotic efficiency, in spite of the obvious loss of information incurred by the use of signs instead of the corresponding numerical values. In this work, sign-based methods in the framework of linear models are developed. In the first part of the book, there are linear and factor models involving independent observations. In the second part, linear models of time series, primarily autoregressive models, are considered.American Mathematical Societyoai:cds.cern.ch:27544381997
spellingShingle XX
Boldin, M V
Simonova, G I
Tyurin, Yu N
Nikolaevich, I Uri
Sign-based methods in linear statistical models
title Sign-based methods in linear statistical models
title_full Sign-based methods in linear statistical models
title_fullStr Sign-based methods in linear statistical models
title_full_unstemmed Sign-based methods in linear statistical models
title_short Sign-based methods in linear statistical models
title_sort sign-based methods in linear statistical models
topic XX
url http://cds.cern.ch/record/2754438
work_keys_str_mv AT boldinmv signbasedmethodsinlinearstatisticalmodels
AT simonovagi signbasedmethodsinlinearstatisticalmodels
AT tyurinyun signbasedmethodsinlinearstatisticalmodels
AT nikolaevichiuri signbasedmethodsinlinearstatisticalmodels