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Active Learning Methods for Electrocardiographic Signal Classification

机译:心电信号分类的主动学习方法

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In this paper, we present three active learning strategies for the classification of electrocardiographic (ECG) signals. Starting from a small and suboptimal training set, these learning strategies select additional beat samples from a large set of unlabeled data. These samples are labeled manually, and then added to the training set. The entire procedure is iterated until the construction of a final training set representative of the considered classification problem. The proposed methods are based on support vector machine classification and on the: 1) margin sampling; 2) posterior probability; and 3) query by committee principles, respectively. To illustrate their performance, we conducted an experimental study based on both simulated data and real ECG signals from the MIT-BIH arrhythmia database. In general, the obtained results show that the proposed strategies exhibit a promising capability to select samples that are significant for the classification process, i.e., to boost the accuracy of the classification process while minimizing the number of involved labeled samples.
机译:在本文中,我们提出了三种用于心电图(ECG)信号分类的主动学习策略。这些学习策略从一小部分次优训练集开始,从一大批未标记数据中选择其他拍子样本。手动标记这些样本,然后将其添加到训练集中。重复整个过程,直到构建代表所考虑分类问题的最终训练集。所提出的方法基于支持向量机分类并基于:1)余量采样; 2)后验概率;和3)分别通过委员会的原则进行查询。为了说明其性能,我们基于模拟数据和来自MIT-BIH心律失常数据库的真实ECG信号进行了一项实验研究。通常,获得的结果表明,所提出的策略表现出有希望的能力来选择对于分类过程重要的样品,即,在最小化所涉及的标记样品的数量的同时,提高分类过程的准确性。

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