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Semi-supervised Learning Using Siamese Networks

机译:半监督使用暹罗网络学习

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Neural networks have been successfully used as classification models yielding state-of-the-art results when trained on a large number of labeled samples. These models, however, are more difficult to train successfully for semi-supervised problems where small amounts of labeled instances are available along with a large number of unlabeled instances. This work explores a new training method for semi-supervised learning that is based on similarity function learning using a Siamese network to obtain a suitable embedding. The learned representations are discriminative in Euclidean space, and hence can be used for labeling unlabeled instances using a nearest-neighbor classifier. Confident predictions of unlabeled instances are used as true labels for retraining the Siamese network on the expanded training set. This process is applied iteratively. We perform an empirical study of this iterative self-training algorithm. For improving unlabeled predictions, local learning with global consistency is also evaluated.
机译:在培训大量标记的样本时,神经网络已成功用作促进最先进的结果。然而,这些模型更难以成功训练,以便在少量标记的实例以及大量未标记的情况下获得少量标记的实例。这项工作探讨了一种新的半监督学习的新培训方法,其基于使用暹罗网络获得合适的嵌入的相似性函数学习。学习的表示在欧几里德空间中是歧视性的,因此可以使用最近邻的分类器来标记未标记的实例。对未标记实例的自信预测被用作Retring在扩展训练集上培训暹罗网络的真实标签。迭代地应用此过程。我们对这种迭代自培训算法进行了实证研究。为了改善未标记的预测,还评估了全局一致性的本地学习。

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