基于流形正则化的半监督逻辑回归

Yu Mao, Muyuan Xi, Hao Yu, Xiaojie Wang
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引用次数: 1

摘要

本文提出了一种新的算法,通过流形正则化将经典概率模型扩展到半监督学习框架。这种正则化用于控制模型的复杂性,通过分布的几何形状来测量。具体来说,数据的内在几何结构通过邻接图来建模,然后利用图拉普拉斯算子(类似于流形上的拉普拉斯-贝尔特拉米算子)来平滑数据分布。我们通过将流形正则化应用于条件训练的对数线性最大熵模型(也称为多项逻辑回归模型)来实现正则化框架。实验结果表明,该算法可以有效地利用数据分布的几何特性,并提供一致性的精度提高。最后,我们简要讨论了将流形正则化框架推广到其他概率模型的问题。
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Semi-supervised logistic regression via manifold regularization
In this paper, we propose a novel algorithm that extends the classical probabilistic models to semi-supervised learning framework via manifold regularization. This regularization is used to control the complexity of the model as measured by the geometry of the distribution. Specifically, the intrinsic geometric structure of data is modeled by an adjacency graph, then, the graph Laplacian, analogous to the Laplace-Beltrami operator on manifold, is applied to smooth the data distributions. We realize the regularization framework by applying manifold regularization to conditionally trained log-linear maximum entropy models, which are also known as multinomial logistic regression models. Experimental evidence suggests that our algorithm can exploit the geometry of the data distribution effectively and provide consistent improvement of accuracy. Finally, we give a short discussion of generalizing manifold regularization framework to other probabilistic models.
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