A minimax bivariate normal model selection (Q1114247)
From MaRDI portal
| This is the item page for this Wikibase entity, intended for internal use and editing purposes. Please use this page instead for the normal view: A minimax bivariate normal model selection |
scientific article; zbMATH DE number 4084719
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | A minimax bivariate normal model selection |
scientific article; zbMATH DE number 4084719 |
Statements
A minimax bivariate normal model selection (English)
0 references
1987
0 references
This paper considers the problem of choosing one among all possible submodels \(N((0,0),I_ 2)\), \(N((\theta_ 1,0),I_ 2)\), \(N((0,\theta_ 2),I_ 2)\), \(N((\theta_ 1,\theta_ 2),I_ 2)\) based on the observation X from \(N((\theta_ 1,\theta_ 2),I_ 2)\) where \((\theta_ 1,\theta_ 2)\in R^ 2\) and \(I_ 2\) is the \(2\times 2\) identity matrix. The general form of a model selection rule is given by \(I_{\underline f}(x)=(I_{f_ 1}(x),I_{f_ 2}(x))\) where \(f_ j\) is a Borel function with \(0\leq f_ j(x)\leq 1\) for \(j=1,2\) and \(I_{f_ j}(x)=1\) with probability \(f_ j(x)\) and 0 with probability \((1-f_ j(x))\). It is shown that there exists a minimax model selection rule relative to a loss function which takes into account both inaccuracy and complexity.
0 references
minimax model selection rule
0 references
0.8734607100486755
0 references