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Bayesian Multiview Dimensionality Reduction for Learning Predictive Subspaces

机译:学习预测子空间的贝叶斯多维型维度减少

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Multiview learning basically tries to exploit different feature representations to obtain better learners. For example, in video and image recognition problems, there are many possible feature representations such as color- and texture-based features. There are two common ways of exploiting multiple views: forcing similarity (i) in predictions and (ii) in latent subspace. In this paper, we introduce a novel Bayesian multiview dimensionality reduction method coupled with supervised learning to find predictive subspaces and its inference details. Experiments show that our proposed method obtains very good results on image recognition tasks in terms of classification and retrieval performances.
机译:MultiView学习基本上尝试利用不同的特征表示来获得更好的学习者。例如,在视频和图像识别问题中,存在许多可能的特征表示,例如基于颜色和纹理的特征。有两种常见的方式利用多种视图:在潜在子空间中强制相似性(i)和(ii)。在本文中,我们介绍了一种新的贝叶斯多维维度减少方法,耦合了监督学习,找到预测子空间及其推理细节。实验表明,在分类和检索性能方面,我们所提出的方法在图像识别任务中获得了非常好的结果。

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