半监督学习的大边界图构造

Lan-Zhe Guo, Shaozu Wang, Yu-Feng Li
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引用次数: 1

摘要

基于图的半监督学习(GSSL)在过去几年中获得了越来越多的关注。大量的实证结果表明,GSSL方法的性能在很大程度上取决于图的构造方法。尽管人们已经为构造好的图付出了巨大的努力,但在一般情况下构造一个好的图仍然是一个挑战。为了解决这个问题,本文提出了一种新的图构造方法。与以前的方法不同,通常在未标记的数据上优化knn型损失,本文提出的方法进一步强化了未标记数据的预测具有较大的边际分离,以帮助排除低质量的图。我们将该问题表述为一个优化问题,并给出了一个有效的算法。在基准数据集上的实验结果表明,与几种具有代表性的图构造方法相比,该方法具有更强的构造良好图的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large Margin Graph Construction for Semi-Supervised Learning
Graph-based semi-supervised learning (GSSL) has gained increased interests in the last few years. A large number of empirical results show that the performance of GSSL methods heavily depends on the graph construction approach. Although great efforts have been devoted to construct good graphs, it remains challenging to construct a good graph in general situations. To alleviate this problem, this paper presents a novel graph construction approach. Unlike previous approaches that typically optimize a kNN-type loss on the unlabeled data, the proposed approach further enforces that the prediction of unlabeled data has a large margin separation so as to help exclude low-quality graphs. We formulate the problem as an optimization and present an efficient algorithm. Experimental results on benchmark data sets show that the proposed approach has a stronger ability to construct good graphs comparing with several representative graph construction approaches.
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