从统计学角度看分类器的半监督学习

IF 2 Q2 ECONOMICS
Daniel Ahfock, Geoffrey J. McLachlan
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引用次数: 6

摘要

机器学习中的半监督学习(SSL)方法越来越受到关注,以在分类器的训练数据由有限数量的已分类观测值但大量的未分类观测值组成的情况下形成分类器。这是因为,由于高昂的获取成本以及在试图为已获取的非保密数据提供真正的类别标签时可能出现的后续财务、时间和道德问题,机密数据的获取可能会非常昂贵。对解决这一问题的统计SSL方法进行了综述,重点介绍了最近的结果,即由部分分类的样本形成的分类器实际上比完全分类的样本具有更小的预期错误率。这种相当矛盾的结果可以通过引入一个具有缺失机制的框架来实现,该框架用于非保密观测的缺失标签。它在实践中常见的情况下最为相关,在这种情况下,未分类的数据主要出现在特征空间中熵相对较高的区域,从而使其类别标签难以容易获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-Supervised Learning of Classifiers from a Statistical Perspective: A Brief Review

There has been increasing attention to semi-supervised learning (SSL) approaches in machine learning to forming a classifier in situations where the training data for a classifier consists of a limited number of classified observations but a much larger number of unclassified observations. This is because the procurement of classified data can be quite costly due to high acquisition costs and subsequent financial, time, and ethical issues that can arise in attempts to provide the true class labels for the unclassified data that have been acquired. A review is provided of statistical SSL approaches to this problem, focussing on the recent result that a classifier formed from a partially classified sample can actually have smaller expected error rate than that if the sample were completely classified. This rather paradoxical outcome is able to be achieved by introducing a framework with a missingness mechanism for the missing labels of the unclassified observations. It is most relevant in commonly occurring situations in practice, where the unclassified data occur primarily in regions of relatively high entropy in the feature space thereby making it difficult for their class labels to be easily obtained.

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来源期刊
CiteScore
3.10
自引率
10.50%
发文量
84
期刊介绍: Econometrics and Statistics is the official journal of the networks Computational and Financial Econometrics and Computational and Methodological Statistics. It publishes research papers in all aspects of econometrics and statistics and comprises of the two sections Part A: Econometrics and Part B: Statistics.
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