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Pseudo-labelling Enhanced Media Bias Detection
Published 16 Jul 2021 in cs.CL, cs.IR, and cs.LG | (2107.07705v1)
Abstract: Leveraging unlabelled data through weak or distant supervision is a compelling approach to developing more effective text classification models. This paper proposes a simple but effective data augmentation method, which leverages the idea of pseudo-labelling to select samples from noisy distant supervision annotation datasets. The result shows that the proposed method improves the accuracy of biased news detection models.
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