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Joint Feature Selection and Structure Preservation for Domain Adaptation

机译:域适应的联合特征选择和结构保存

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The essence of domain adaptation is to explore common latent factors shared by the involved domains. These factors can be specific features or geometric structures. Most of previous methods exploit either the shared features or the shared geometric structures separately. However, the two strategies are complementary with each other and jointly exploring them is more optimal. This paper proposes a novel approach, named joint Feature Selection and Structure Preservation (FSSP), for unsupervised domain adaptation. FSSP smoothly integrates structure preservation and feature selection into a unified optimization problem. Intensive experiments on text categorization, image classification and video event recognition demonstrate that our method performs better, even with up to 30% improvement in average, compared with the state-of-the-art methods.
机译:领域适应的本质是探讨所涉及的域共享的共同潜在因素。这些因素可以是特定的特征或几何结构。以前的大多数方法分别利用共享功能或共享的几何结构。但是,这两项策略互相互补,共同探索它们更为优越。本文提出了一种新的方法,命名为联合特征选择和结构保存(FSSP),用于无监督域适应。 FSSP将结构保存和特征选择平滑地集成到统一的优化问题中。关于文本分类,图像分类和视频事件识别的密集实验表明,与最先进的方法相比,我们的方法平均平均增长越大,平均达到高达30%。

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