{"title":"Approximation algorithms for classification problems with pairwise relationships: metric labeling and Markov random fields","authors":"J. Kleinberg, É. Tardos","doi":"10.1109/SFFCS.1999.814572","DOIUrl":null,"url":null,"abstract":"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 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 non-trivial 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.","PeriodicalId":385047,"journal":{"name":"40th Annual Symposium on Foundations of Computer Science (Cat. No.99CB37039)","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"1999-10-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"550","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"40th Annual Symposium on Foundations of Computer Science (Cat. No.99CB37039)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/SFFCS.1999.814572","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 550
Abstract
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 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 non-trivial 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.
在传统的分类问题中,我们希望为n个对象中的每个对象分配k个标签(或类)中的一个,其方式与我们对问题的一些观察数据一致。这一领域的一个活跃的研究方向是当一个人有关于被分类对象之间的成对关系的信息时进行分类;这个问题是马尔可夫随机场框架的主要动机之一,它出现在图像处理、生物计量和文档分析等领域。在其最基本的形式中,这种风格的分析寻求一种优化组合函数的分类,该组合函数由分配成本(基于我们为每个对象所做的单独标签选择)和分离成本(基于我们为两个“相关”对象所做的成对选择)组成。我们提出了这种类型的一般分类问题,度量标记问题;我们证明了它包含作为特例的一些标准分类框架,其中包括一些由马尔可夫随机场理论产生的分类框架。从组合优化的角度来看,我们的问题可以看作是多路切割问题的一个实质推广,相当于一类无能力二次分配问题。我们提供了第一个非平凡的多项式时间逼近算法,用于这类分类问题的一般族。我们的主要结果是一个O(log k log log k)近似算法,用于度量标记问题,关于k个标记集上的任意度量,以及一组对象上的任意加权关系图。对于标签被赋予一致度量的特殊情况——所有距离都相同——我们的方法提供了一个2近似。