On the Kuhn-Tucker equivalence theorem and its applications to isotonic regression

Thesis (M.Sc.)--Memorial University of Newfoundland, 2001. Mathematics and Statistics Bibliography: leaves 59-62. Prior information regarding a statistical model frequently constrains the shape of the parameter set and can often be quantified by placing inequality constraints on the parameters. For...

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Main Author: Liu, Wei, 1968-
Other Authors: Memorial University of Newfoundland. Dept. of Mathematics and Statistics
Format: Thesis
Language:English
Published: 2001
Subjects:
Online Access:http://collections.mun.ca/cdm/ref/collection/theses4/id/1940
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spelling ftmemorialunivdc:oai:collections.mun.ca:theses4/1940 2023-05-15T17:23:33+02:00 On the Kuhn-Tucker equivalence theorem and its applications to isotonic regression Liu, Wei, 1968- Memorial University of Newfoundland. Dept. of Mathematics and Statistics 2001 [iv], 62 leaves Image/jpeg; Application/pdf http://collections.mun.ca/cdm/ref/collection/theses4/id/1940 Eng eng Electronic Theses and Dissertations (6.19 MB) -- http://collections.mun.ca/PDFs/theses/Liu_Wei.pdf a1538884 http://collections.mun.ca/cdm/ref/collection/theses4/id/1940 The author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission. Paper copy kept in the Centre for Newfoundland Studies, Memorial University Libraries Probabilities Regression analysis Text Electronic thesis or dissertation 2001 ftmemorialunivdc 2015-08-06T19:20:58Z Thesis (M.Sc.)--Memorial University of Newfoundland, 2001. Mathematics and Statistics Bibliography: leaves 59-62. Prior information regarding a statistical model frequently constrains the shape of the parameter set and can often be quantified by placing inequality constraints on the parameters. For example, a regression function may be nondecreasing or convex or both; or the treatment response may stochastically dominate the control. The order restricted statistical inference has been well developed since the 1950's. The isotonic regression solves many restricted maximum likelihood estimation problems. And the theory of duality (cf. Barlow and Brunk (1972)) has provided insights into new problems. Both the isotonic regression and Fenchel duality play the important roles in order restricted statistical inference. -- Kuhn and Tucker (1951) proposed a necessary and sufficient condition for the solution to an inequality constrained maximization problem. Since then, the Kuhn-Tucker equivalence theorem has been extensively applied to many fields such as optimization theory, engineering, the economy and so on. -- In this paper, we focus on the applications of the Kuhn-Tucker equivalence theorem to order restricted estimation. This equivalence theorem provides a completely different approach to prove many important results such as the generalized isotonic regression problem due to Barlow and Brunk (1972), I-projection problems due to Dykstra (1985) and so on. We provide some insights into its extensive applications to ordered statistical inference. We expect that the kuhn-Tucker equivalence theorem will become a powerful tool in this field. -- Key words: Convex cone, Isotonic regression, Linearity space, Partial ordering, Polyhedral convex sets, Simple tree ordering, Van Eeden's algorithm. Thesis Newfoundland studies University of Newfoundland Memorial University of Newfoundland: Digital Archives Initiative (DAI)
institution Open Polar
collection Memorial University of Newfoundland: Digital Archives Initiative (DAI)
op_collection_id ftmemorialunivdc
language English
topic Probabilities
Regression analysis
spellingShingle Probabilities
Regression analysis
Liu, Wei, 1968-
On the Kuhn-Tucker equivalence theorem and its applications to isotonic regression
topic_facet Probabilities
Regression analysis
description Thesis (M.Sc.)--Memorial University of Newfoundland, 2001. Mathematics and Statistics Bibliography: leaves 59-62. Prior information regarding a statistical model frequently constrains the shape of the parameter set and can often be quantified by placing inequality constraints on the parameters. For example, a regression function may be nondecreasing or convex or both; or the treatment response may stochastically dominate the control. The order restricted statistical inference has been well developed since the 1950's. The isotonic regression solves many restricted maximum likelihood estimation problems. And the theory of duality (cf. Barlow and Brunk (1972)) has provided insights into new problems. Both the isotonic regression and Fenchel duality play the important roles in order restricted statistical inference. -- Kuhn and Tucker (1951) proposed a necessary and sufficient condition for the solution to an inequality constrained maximization problem. Since then, the Kuhn-Tucker equivalence theorem has been extensively applied to many fields such as optimization theory, engineering, the economy and so on. -- In this paper, we focus on the applications of the Kuhn-Tucker equivalence theorem to order restricted estimation. This equivalence theorem provides a completely different approach to prove many important results such as the generalized isotonic regression problem due to Barlow and Brunk (1972), I-projection problems due to Dykstra (1985) and so on. We provide some insights into its extensive applications to ordered statistical inference. We expect that the kuhn-Tucker equivalence theorem will become a powerful tool in this field. -- Key words: Convex cone, Isotonic regression, Linearity space, Partial ordering, Polyhedral convex sets, Simple tree ordering, Van Eeden's algorithm.
author2 Memorial University of Newfoundland. Dept. of Mathematics and Statistics
format Thesis
author Liu, Wei, 1968-
author_facet Liu, Wei, 1968-
author_sort Liu, Wei, 1968-
title On the Kuhn-Tucker equivalence theorem and its applications to isotonic regression
title_short On the Kuhn-Tucker equivalence theorem and its applications to isotonic regression
title_full On the Kuhn-Tucker equivalence theorem and its applications to isotonic regression
title_fullStr On the Kuhn-Tucker equivalence theorem and its applications to isotonic regression
title_full_unstemmed On the Kuhn-Tucker equivalence theorem and its applications to isotonic regression
title_sort on the kuhn-tucker equivalence theorem and its applications to isotonic regression
publishDate 2001
url http://collections.mun.ca/cdm/ref/collection/theses4/id/1940
genre Newfoundland studies
University of Newfoundland
genre_facet Newfoundland studies
University of Newfoundland
op_source Paper copy kept in the Centre for Newfoundland Studies, Memorial University Libraries
op_relation Electronic Theses and Dissertations
(6.19 MB) -- http://collections.mun.ca/PDFs/theses/Liu_Wei.pdf
a1538884
http://collections.mun.ca/cdm/ref/collection/theses4/id/1940
op_rights The author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission.
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