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Effective transductive learning via objective model selection

机译:通过客观模型选择进行有效的跨语言学习

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This paper is concerned with transductive learning. We study a recent transductive learning approach based on clustering. In this approach one constructs a diversity of unsupervised models of the unlabeled data using clustering algorithms. These models are then exploited to construct a number of hypotheses using the labeled data and the learner selects an hypothesis that minimizes a transductive error bound, which holds with high probability. Empirical examination of this approach, implemented with 'spectral clustering', on a suite of benchmark datasets from the UCI repository, indicates that the new approach is effective and comparable with one of the best known transductive learning algorithms to-date.
机译:本文涉及跨语言学习。我们研究了一种基于聚类的最近的转导学习方法。在这种方法中,使用聚类算法构造了未标记数据的多种无监督模型。然后利用这些模型使用标记的数据来构建许多假设,然后学习者选择一个假设,该假设最大程度地降低了转导错误的范围。对UCI知识库中的一组基准数据集使用“频谱聚类”实施的这种方法进行的实证研究表明,该新方法是有效的,并且可以与迄今为止最著名的转导学习算法相媲美。

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