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The Multiverse Loss for Robust Transfer Learning

机译:稳健转移学习的多元损失

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Deep learning techniques are renowned for supporting effective transfer learning. However, as we demonstrate, the transferred representations support only a few modes of separation and much of its dimensionality is unutilized. In this work, we suggest to learn, in the source domain, multiple orthogonal classifiers. We prove that this leads to a reduced rank representation, which, however, supports more discriminative directions. Interestingly, the softmax probabilities produced by the multiple classifiers are likely to be identical. Experimental results, on CIFAR-100 and LFW, further demonstrate the effectiveness of our method.
机译:深度学习技术因支持有效的转移学习而闻名。但是,正如我们演示的那样,转移的表示形式仅支持少数几种分离模式,其大部分维数尚未使用。在这项工作中,我们建议在源域中学习多个正交分类器。我们证明这会导致等级降低,但是支持更具区分性的方向。有趣的是,由多个分类器产生的softmax概率很可能是相同的。在CIFAR-100和LFW上的实验结果进一步证明了我们方法的有效性。

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