基于一般未标记数据的半监督学习

Kaizhu Huang, Zenglin Xu, Irwin King, Michael R. Lyu
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引用次数: 24

摘要

我们考虑了一般未标记数据的半监督学习(SSL)问题,这些数据可能包含不相关的样本。在二元设置中,我们的模型通过将未标记数据表述为三类(-1,+1,0)混合物,设法更好地利用来自未标记数据的信息,其中类别0表示不相关数据。这将我们的工作与传统的SSL问题区分开来,传统的SSL问题假设未标记的数据仅包含相关的样本,+1或-1,它们被迫与给定的标记样本相同。这项工作也不同于另一种流行的模型,即宇宙sum学习(universum的意思是“不相关的”数据),因为宇宙sum不需要事先指定。我们提出的框架的一个重要贡献是,这些不相关的样本可以从可用的未标记数据中自动检测出来,即使它们与相关数据混合在一起。因此,这提供了一个通用的SSL框架,它不会强制“清除”未标记的数据。更重要的是,我们将这个一般的学习框架表述为一个半确定的规划问题,使其在多项式时间内可解。一系列实验表明,该框架在综合数据和真实数据上都优于传统SSL。
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 from General Unlabeled Data
We consider the problem of semi-supervised learning (SSL) from general unlabeled data, which may contain irrelevant samples. Within the binary setting, our model manages to better utilize the information from unlabeled data by formulating them as a three-class (-1,+1, 0) mixture, where class 0 represents the irrelevant data. This distinguishes our work from the traditional SSL problem where unlabeled data are assumed to contain relevant samples only, either +1 or -1, which are forced to be the same as the given labeled samples. This work is also different from another family of popular models, universum learning (universum means "irrelevant" data), in that the universum need not to be specified beforehand. One significant contribution of our proposed framework is that such irrelevant samples can be automatically detected from the available unlabeled data, even though they are mixed with relevant data. This hence presents a general SSL framework that does not force "clean" unlabeled data.More importantly, we formulate this general learning framework as a Semi-definite Programming problem, making it solvable in polynomial time. A series of experiments demonstrate that the proposed framework can outperform the traditional SSL on both synthetic and real data.
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