Isotonic Regression via Partitioning

Algorithms are given for determining weighted isotonic regressions satisfying order constraints specified via a directed acyclic graph (DAG). For the L 1 metric a partitioning approach is used which exploits the fact that L 1 regression values can always be chosen to be data values. Extending this a...

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Bibliographic Details
Published inAlgorithmica Vol. 66; no. 1; pp. 93 - 112
Main Author Stout, Quentin F.
Format Journal Article
LanguageEnglish
Published New York Springer-Verlag 01.05.2013
Springer
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ISSN0178-4617
1432-0541
DOI10.1007/s00453-012-9628-4

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Summary:Algorithms are given for determining weighted isotonic regressions satisfying order constraints specified via a directed acyclic graph (DAG). For the L 1 metric a partitioning approach is used which exploits the fact that L 1 regression values can always be chosen to be data values. Extending this approach, algorithms for binary-valued L 1 isotonic regression are used to find L p isotonic regressions for 1< p <∞. Algorithms are given for trees, 2-dimensional and multidimensional orderings, and arbitrary DAGs. Algorithms are also given for L p isotonic regression with constrained data and weight values, L 1 regression with unweighted data, and L 1 regression for DAGs where there are multiple data values at the vertices.
ISSN:0178-4617
1432-0541
DOI:10.1007/s00453-012-9628-4