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Density-based semi-supervised online sequential extreme learning machine

机译:基于密度的半监督在线顺序极限学习机

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This paper proposes a density-based semi-supervised online sequential extreme learning machine (D-SOS-ELM). The proposed method can realize online learning of unlabeled samples chunk by chunk. Local density and distance are used to measure the similarity of patterns, and the patterns with high confidence are selected by the 'follow' strategy for online learning, which can improve the accuracy of learning. Through continuous patterns selection, the proposed method ultimately achieves effective learning of unlabeled patterns. Furthermore, using local density and relative distance can effectively respond to the relationship between patterns. Compared with the traditional distance-based similarity measure, the ability to deal with complex data is improved. Empirical study on several standard benchmark data sets demonstrates that the proposed D-SOS-ELM model outperforms state-of-art methods in terms of accuracy.
机译:本文提出了一种基于密度的半监督在线序贯极限学习机(D-SOS-ELM)。 该方法可以通过块实现未标记样本块的在线学习。 局部密度和距离用于测量模式的相似性,并且通过“遵循”在线学习的“遵循”策略选择高信心的模式,这可以提高学习的准确性。 通过连续的图案选择,所提出的方法最终实现了有效学习未标记的模式。 此外,使用局部密度和相对距离可以有效地响应图案之间的关系。 与传统的距离的相似度措施相比,改善了处理复杂数据的能力。 关于若干标准基准数据集的实证研究表明,所提出的D-SOS-ELM模型在准确性方面优于最先进的方法。

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