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SEMI-SUPERVISED TRANSFER LEARNING USING MARGINAL PREDICTORS

机译:使用边际预测者进行半监督的转移学习

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This paper addresses the problem of using unlabeled data in transfer learning. Specifically, we focus on transfer learning for a new unlabeled dataset using partially labeled training datasets that consist of a small number of labeled data points and a large number of unlabeled data points. To enable transfer learning, we assume that the training and testing datasets are drawn from similar probability distributions and that the unlabeled data in each dataset can be described by similar underlying manifolds. The solution offered is a distribution free, kernel and graph Laplacian-based approach which optimizes empirical risk in the appropriate reproducing kernel Hilbert space. The approach is tested on a synthetic dataset for classification accuracy and on the Parkinson’s Telemonitoring dataset from the UCI machine learning repository for prediction accuracy. Our results show a 27.3% improvement in miss-classification error and a 5.9% improvement in prediction error as compared to standard supervised learning algorithms. The results shown in this work can be widely applied in domains from medicine, to machine reliability, to prediction of human actions.
机译:本文解决了在迁移学习中使用未标记数据的问题。具体来说,我们专注于使用由少量标记数据点和大量未标记数据点组成的部分标记训练数据集为新的未标记数据集进行迁移学习。为了实现转移学习,我们假设训练和测试数据集是从相似的概率分布中提取的,并且每个数据集中的未标记数据都可以由相似的基础流形描述。提供的解决方案是一种无分布的,基于核和图拉普拉斯算子的方法,该方法可在适当的复制核Hilbert空间中优化经验风险。该方法已在综合数据集上进行了分类精度测试,并在UCI机器学习存储库中的帕金森远程监控数据集上进行了预测精度测试。与标准的监督学习算法相比,我们的结果表明,未分类错误改善了27.3%,预测错误改善了5.9%。这项工作中显示的结果可以广泛应用于医学,机器可靠性以及人类行为预测等领域。

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