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Titel:

Algebraic Techniques for Gaussian Models

Dokumenttyp:
Zeitschriftenaufsatz
Autor(en):
Drton, Mathias
Abstract:
Many statistical models are algebraic in that they are defined by polynomial constraints or by parameterizations that are polynomial or rational maps. This opens the door for tools from computational algebraic geometry. These tools can be employed to solve equation systems arising in maximum likelihood estimation and parameter identification, but they also permit to study model singularities at which standard asymptotic approximations to the distribution of estimators and test statistics may no...     »
Stichworte:
Algebraic statistics, multivariate normal distribution, parameter identification, singularities
Dewey Dezimalklassifikation:
510 Mathematik
Kongresstitel:
Prague Stochastics 2006, A joint session of "7th Prague Symposium on Asymptotic Statistics" and "15th Prague Conference on Information Theory, Statistical Decision Functions and Random Processes"
Kongress / Zusatzinformationen:
August 21-25, 2006
Zeitschriftentitel:
Proceedings of Prague Stochastics 2006
Jahr:
2006
Jahr / Monat:
2006-11
Quartal:
4. Quartal
Monat:
Nov
Seitenangaben Beitrag:
91-90
Sprache:
en
WWW:
Arxiv
Verlag / Institution:
Matfyzpress
Verlagsort:
Prague
Print-ISSN:
8086732754 9788086732756
Publikationsdatum:
01.11.2006
Format:
Text
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