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Active Learning with Spatial Distribution based Semi-Supervised Extreme Learning Machine for Multiclass Classification

机译:基于空间分布的半监控极端学习机的主动学习,用于多字母分类

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Unlabeled samples are often readily available in our daily lives. However, valuable information contained in a large number of unlabeled samples tends to be ignored by general supervised learning models. To make full use of unlabeled samples, we propose a novel framework that combines active learning with semi-supervised learning. On one hand, we expect to label as few samples as possible while achieving guaranteed classification performance, hence it's of vital importance to design a specific active learning strategy to select only the most valuable batch of samples for expert labeling. On the other hand, the introduction of distribution information in unlabeled sample pool will bring great benefits to the model. Both labeled samples and unlabeled samples can be used for training semi-supervised classification model. In this paper, uncertainty-based active learning and manifold-based semi-supervised learning are integrated into our framework. Extreme learning machine (ELM) is adopted as our base classifier. Moreover, a novel uncertainty criterion, called Bell-Function-based uncertainty, is proposed for active learning selection for the first time. Empirical results on six public benchmark datasets show that our algorithm produces better performance in comparison with other approaches.
机译:我们的日常生活中通常很容易获得未标记的样本。然而,大量未标记的样本中包含的有价值的信息往往被一般监督学习模型忽略。为了充分利用未标记的样本,我们提出了一种新颖的框架,将活跃的学习与半监督学习相结合。一方面,我们希望尽可能少的样本标记,同时实现保证的分类性能,因此设计特定的主动学习策略至关重要,以便仅为专家标签选择最有价值的样本批次。另一方面,在未标记的样本池中引入分发信息将为模型带来很大的利益。标记的样品和未标记的样品都可用于培训半监督分类模型。在本文中,基于不确定性的积极学习和基于流形的半监督学习被整合到我们的框架中。作为我们的基础分类器采用极端学习机(ELM)。此外,提出了一种称为基于钟函数的不确定性的新颖性不确定性标准,用于首次进行主动学习选择。六个公共基准数据集的经验结果表明,与其他方法相比,我们的算法会产生更好的性能。

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