关于协同训练式算法

Cailing Dong, Yilong Yin, X. Guo, Gongping Yang, Guang-Tong Zhou
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引用次数: 3

摘要

在过去的几年里,半监督学习已经成为机器学习和数据挖掘领域的一个热门话题,因为在许多实际应用中,手动标记训练样本是一项繁琐、容易出错且耗时的任务。作为半监督学习中最主要的算法之一,协同训练在许多应用中都显示出其优越性。到目前为止,已经出现了各种各样的共同训练算法,旨在解决实际问题。为了启动一个有效的协同训练过程,这些变量作为一个整体以四种不同的方式创造它们的多样性,即双视图级别,底层分类器级别,数据集级别和主动学习级别。本文正是从这一角度对协同训练类算法进行了综述,并分别给出了各个层次的典型例子和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Co-Training Style Algorithms
During the past few years, semi-supervised learning has become a hot topic in machine learning and data mining, since manually labeling training examples is a tedious, error prone and time-consuming task in many practical applications. As one of the most predominant semi-supervised learning algorithms, co-training has drawn much attention and shown its superiority in many applications. So far, there have been a variety of variants of co-training algorithms aiming to settle practical problems. In order to launch an effective co-training process, these variants as a whole create their diversities in four different ways, i.e. two-view level, underlying classifiers level, datasets level and active learning level. This paper gives a review on co-training style algorithms just from this view and presents typical examples and analysis for each level respectively.
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