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Pseudo Labeling and Negative Feedback Learning for Large-Scale Multi-Label Domain Classification

机译:大规模多标签域分类的伪标记和负反馈学习

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In large-scale domain classification, an utterance can be handled by multiple domains with overlapped capabilities. However, only a limited number of ground-truth domains are provided for each training utterance in practice while knowing as many as correct target labels is helpful for improving the model performance. In this paper, given one ground-truth domain for each training utterance, we regard domains consistently predicted with the highest confidences as additional pseudo labels for the training. In order to reduce prediction errors due to incorrect pseudo labels, we leverage utterances with negative system responses to decrease the confidences of the incorrectly predicted domains. Evaluating on user utterances from an intelligent conversational system, we show that the proposed approach significantly improves the performance of domain classification with hypothesis reranking.
机译:在大规模域分类中,发声可以由具有重叠功能的多个域来处理。但是,在实践中,仅为每个训练讲话提供有限数量的地面真相域,而知道尽可能多的正确目标标签对于改善模型性能是有帮助的。在本文中,给定每种训练发声的地面真实域,我们将以最高置信度一致预测的域视为训练的附加伪标记。为了减少由于错误的伪标签而导致的预测错误,我们利用带有负系统响应的话语来降低错误预测的域的置信度。对来自智能对话系统的用户话语进行评估,我们表明,所提出的方法通过假设重新排序显着提高了领域分类的性能。

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