Co-MLM: A SSL Algorithm Based on the Minimal Learning Machine

Weslley L. Caldas, J. Gomes, Michelle G. Cacais, D. Mesquita
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引用次数: 3

Abstract

Semi-supervised learning is a challenging topic in machine learning that has attracted much attention in recent years. The availability of huge volumes of data and the work necessary to label all these data are two of the reasons that can explain this interest. Among the various methods for semi-supervised learning, the co-training framework has become popular due to its simple formulation and promising results. In this work, we propose Co-MLM, a semi-supervised learning algorithm based on a recently supervised method named Minimal Learning Machine (MLM), built upon co-training framework. Experiments on UCI data sets showed that Co-MLM has promising performance in compared to other co-training style algorithms.
一种基于最小学习机的SSL算法
半监督学习是近年来备受关注的机器学习领域中一个具有挑战性的课题。大量数据的可用性和标记所有这些数据所需的工作是可以解释这种兴趣的两个原因。在半监督学习的各种方法中,共同训练框架因其简单的公式和令人满意的效果而受到欢迎。在这项工作中,我们提出了Co-MLM,一种基于共同训练框架的半监督学习算法,该算法基于最近的一种名为最小学习机(MLM)的监督方法。在UCI数据集上的实验表明,与其他协同训练风格的算法相比,Co-MLM具有良好的性能。
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