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Strong Baselines for Neural Semi-Supervised Learning under Domain Shift

机译:领域转移下神经半监督学习的强大基准

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Novel neural models have been proposed in recent years for learning under domain shift. Most models, however, only evaluate on a single task, on proprietary datasets, or compare to weak baselines, which makes comparison of models difficult. In this paper, we re-evaluate classic general-purpose bootstrapping approaches in the context of neural networks under domain shifts vs. recent neural approaches and propose a novel multi-task tri-training method that reduces the time and space complexity of classic tri-training. Extensive experiments on two benchmarks are negative: while our novel method establishes a new state-of-the-art for sentiment analysis, it does not fare consistently the best. More importantly, we arrive at the somewhat surprising conclusion that classic tri-training, with some additions, outperforms the state of the art. We conclude that classic approaches constitute an important and strong baseline.
机译:近年来,已经提出了用于域转移下学习的新型神经模型。但是,大多数模型仅对单个任务,专有数据集进行评估,或者仅与较弱的基准进行比较,因此很难进行模型比较。在本文中,我们将在域移动与最近的神经方法相比的情况下,在神经网络的背景下重新评估经典的通用自举方法,并提出一种新颖的多任务三训练方法,该方法可减少经典三重方法的时间和空间复杂性训练。在两个基准上进行的大量实验是负面的:虽然我们的新颖方法为情感分析建立了新的最新技术,但并不能始终保持最佳状态。更重要的是,我们得出了一个令人惊讶的结论,即经典的三级训练(加上一些附加功能)的性能超越了现有技术。我们得出的结论是,经典方法构成了重要而牢固的基准。

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