Approximation algorithms for classification problems with pairwise relationships: metric labeling and Markov random fields
In a traditional classification problem, we wish to assign one of k labels (or classes) to each of n objects , in a way that is consistent with some observed data that we have about the problem. An active line of research in this area is concerned with classification when one has information about p...
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Veröffentlicht in: | Journal of the ACM 2002-09, Vol.49 (5), p.616-639 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | In a traditional classification problem, we wish to assign one of
k labels
(or classes) to each of
n objects
, in a way that is consistent with some observed data that we have about the problem. An active line of research in this area is concerned with classification when one has information about
pairwise relationships
among the objects to be classified; this issue is one of the principal motivations for the framework of Markov random fields, and it arises in areas such as image processing, biometry, and document analysis. In its most basic form, this style of analysis seeks to find a classification that optimizes a combinatorial function consisting of
assignment costs
---based on the individual choice of label we make for each object---and
separation costs
---based on the
pair
of choices we make for two "related" objects.We formulate a general classification problem of this type, the
metric labeling problem
; we show that it contains as special cases a number of standard classification frameworks, including several arising from the theory of Markov random fields. From the perspective of combinatorial optimization, our problem can be viewed as a substantial generalization of the multiway cut problem, and equivalent to a type of
uncapacitated quadratic assignment problem
.We provide the first nontrivial polynomial-time approximation algorithms for a general family of classification problems of this type. Our main result is an
O
(log
k
log log
k
)-approximation algorithm for the metric labeling problem, with respect to an arbitrary metric on a set of
k
labels, and an arbitrary weighted graph of relationships on a set of objects. For the special case in which the labels are endowed with the
uniform metric
---all distances are the same---our methods provide a 2-approximation algorithm. |
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ISSN: | 0004-5411 1557-735X |
DOI: | 10.1145/585265.585268 |