The Set Classification Problem and Solution Methods

Xia Ning, G. Karypis
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引用次数: 24

Abstract

This paper focuses on developing classification algorithms for problems in which there is a need to predict the class based on multiple observations (examples) of the same phenomenon (class). These problems give rise to a new classification problem, referred to as set classification, that requires the prediction of a set of instances given the prior knowledge that all the instances of the set belong to the same unknown class. This problem falls under the general class of problems whose instances have class label dependencies. Four methods for solving the set classification problem are developed and studied. The first is based on a straightforward extension of the traditional classification paradigm whereas the other three are designed to explicitly take into account the known dependencies among the instances of the unlabeled set during learning or classification. A comprehensive experimental evaluation of the various methods and their underlying parameters shows that some of them lead to significant gains in performance.
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集分类问题及其求解方法
本文的重点是针对需要基于同一现象(类)的多个观察(示例)来预测类别的问题开发分类算法。这些问题产生了一个新的分类问题,称为集合分类,它要求在给定集合的所有实例属于同一未知类的先验知识的情况下预测一组实例。此问题属于其实例具有类标签依赖关系的一般问题。提出并研究了解决集合分类问题的四种方法。第一个是基于传统分类范式的直接扩展,而其他三个是为了在学习或分类过程中明确考虑未标记集合实例之间的已知依赖关系而设计的。对各种方法及其基本参数的综合实验评估表明,其中一些方法可以显著提高性能。
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