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Transfer Learning across Feature-Rich Heterogeneous Feature Spaces via Feature-Space Remapping (FSR)

机译:通过功能空间重新映射(FSR)在功能丰富的异构功能空间上转移学习

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摘要

Transfer learning aims to improve performance on a target task by utilizing previous knowledge learned from source tasks. In this paper we introduce a novel heterogeneous transfer learning technique, Feature- Space Remapping (FSR), which transfers knowledge between domains with different feature spaces. This is accomplished without requiring typical feature-feature, feature instance, or instance-instance co-occurrence data. Instead we relate features in different feature-spaces through the construction of meta-features. We show how these techniques can utilize multiple source datasets to construct an ensemble learner which further improves performance. We apply FSR to an activity recognition problem and a document classification problem. The ensemble technique is able to outperform all other baselines and even performs better than a classifier trained using a large amount of labeled data in the target domain. These problems are especially difficult because in addition to having different feature-spaces, the marginal probability distributions and the class labels are also different. This work extends the state of the art in transfer learning by considering large transfer across dramatically different spaces.
机译:转移学习旨在通过利用从源任务中学到的知识来提高目标任务的性能。在本文中,我们介绍了一种新颖的异构转移学习技术,即特征空间重映射(FSR),它可以在具有不同特征空间的域之间转移知识。无需典型的特征功能,特征实例或实例实例共现数据即可完成此操作。相反,我们通过元特征的构造将不同特征空间中的特征关联起来。我们将展示这些技术如何利用多个源数据集来构建整体学习器,从而进一步提高性能。我们将FSR应用于活动识别问题和文档分类问题。集成技术能够胜过所有其他基准,甚至比使用在目标域中使用大量标记数据训练的分类器的性能更好。这些问题特别困难,因为除了具有不同的特征空间之外,边际概率分布和类别标签也不同。通过考虑跨越截然不同的空间进行大规模转移,这项工作扩展了转移学习的最新水平。

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