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Negative transfer detection in transductive transfer learning

机译:转导学习中的负迁移检测

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摘要

Transfer learning method has been widely used in machine learning when training data is limited. However, class noise accumulated during learning iterations can lead to negative transfer which can adversely affect performance when more training data is used. In this paper, we propose a novel method to identify noise samples for noise reduction. More importantly, the method can detect the point where negative transfer happens such that transfer learning can terminate at the near top performance point. In this method, we use the sum of the Rademacher distribution to estimate the class noise rate of transferred data. Transferred data having high probability of being labeled wrongly is removed to reduce noise accumulation. This negative sample reduction process can be repeated several times during transfer learning until we find the point where negative transfer occurs. As we can detect the point where negative transfer occurs, our method not only has the ability to delay the point where negative transfer happens, but also the ability to stop transfer learning algorithms at the right place for top performance gain. Evaluation based on cross-lingual/domain opinion analysis evaluation data set shows that our algorithm achieves the state-of-the-art result. Furthermore, our system shows a monotonic increase trend in performance improvement when more training data are used beating the performance degradation curse of most transfer learning methods when training data reaches certain size.
机译:当训练数据有限时,转移学习方法已广泛用于机器学习中。但是,在学习迭代过程中累积的班级噪声可能导致负迁移,这在使用更多训练数据时可能会对性能产生不利影响。在本文中,我们提出了一种新颖的方法来识别噪声样本以降低噪声。更重要的是,该方法可以检测到发生负迁移的点,从而迁移学习可以在最高性能点附近终止。在这种方法中,我们使用Rademacher分布的总和来估计传输数据的类噪声率。去除具有被错误标记的高可能性的传输数据以减少噪声累积。负样本减少过程可以在转移学习过程中重复多次,直到找到负转移的发生点。当我们可以检测到发生负迁移的点时,我们的方法不仅具有延迟发生负迁移的点的能力,而且还能够在正确的位置停止迁移学习算法以获取最佳性能。基于跨语言/领域观点分析评估数据集的评估表明,我们的算法达到了最新的结果。此外,当训练数据达到一定大小时,当使用更多的训练数据时,我们的系统显示出性能改善的单调增长趋势,击败了大多数转移学习方法的性能下降诅咒。

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