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Beyond Dataset Bias: Multi-task Unaligned Shared Knowledge Transfer

机译:超越数据集偏置:多任务未对准共享知识传输

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Many visual datasets are traditionally used to analyze the performance of different learning techniques. The evaluation is usually done within each dataset, therefore it is questionable if such results are a reliable indicator of true generalization ability. We propose here an algorithm to exploit the existing data resources when learning on a new multiclass problem. Our main idea is to identify an image representation that decomposes orthogonally into two subspaces: a part specific to each dataset, and a part generic to, and therefore shared between, all the considered source sets. This allows us to use the generic representation as un-biased reference knowledge for a novel classification task. By casting the method in the multi-view setting, we also make it possible to use different features for different databases. We call the algorithm MUST, Multitask Unaligned Shared knowledge Transfer. Through extensive experiments on five public datasets, we show that MUST consistently improves the cross-datasets generalization performance.
机译:许多视觉数据集传统上用于分析不同学习技术的性能。评估通常在每个数据集内完成,因此如果这样的结果是真正的泛化能力的可靠指标。我们在此提出了一种算法,在新的多字符问题上学习时利用现有数据资源。我们的主要思想是识别图像表示,该图像表示将正交分解为两个子空间:特定于每个数据集的一部分,以及所有被视为源集之间的零件通用,并且因此共享。这允许我们使用通用表示作为新颖分类任务的未偏置参考知识。通过在多视图设置中铸造方法,我们还可以使用不同的数据库使用不同的功能。我们必须调用算法必须,Multitask未对齐共享知识传输。通过对五个公共数据集的大量实验,我们表明必须始终如一地提高跨数据集泛化性能。

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