校准用于自然语言处理的结构化输出预测器。

Abhyuday Jagannatha, Hong Yu
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引用次数: 24

摘要

我们解决了校准自然语言处理(NLP)应用中感兴趣的输出实体的预测置信度的问题。重要的是,NLP应用程序(如命名实体识别和问答)为其预测生成校准的置信度分数,特别是如果应用程序要部署在安全关键领域(如医疗保健)中。然而,这种结构化预测模型的输出空间往往太大,无法直接适应二值或多类校准方法。在这项研究中,我们提出了一种基于神经网络的结构化预测模型中感兴趣的输出实体的通用校准方案。该方法可用于任何二值类标定方案和神经网络模型。此外,我们表明,我们的校准方法也可以用作不确定性感知,实体特定的解码步骤,以提高底层模型的性能,而不需要额外的训练成本或数据需求。我们表明,我们的方法优于当前的命名实体识别、词性和问答校准技术。我们还通过跨多个任务和基准数据集的解码步骤提高了模型的性能。该方法还提高了域外测试场景下的标定和模型性能。
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Calibrating Structured Output Predictors for Natural Language Processing.

We address the problem of calibrating prediction confidence for output entities of interest in natural language processing (NLP) applications. It is important that NLP applications such as named entity recognition and question answering produce calibrated confidence scores for their predictions, especially if the applications are to be deployed in a safety-critical domain such as healthcare. However, the output space of such structured prediction models is often too large to adapt binary or multi-class calibration methods directly. In this study, we propose a general calibration scheme for output entities of interest in neural network based structured prediction models. Our proposed method can be used with any binary class calibration scheme and a neural network model. Additionally, we show that our calibration method can also be used as an uncertainty-aware, entity-specific decoding step to improve the performance of the underlying model at no additional training cost or data requirements. We show that our method outperforms current calibration techniques for named-entity-recognition, part-of-speech and question answering. We also improve our model's performance from our decoding step across several tasks and benchmark datasets. Our method improves the calibration and model performance on out-ofdomain test scenarios as well.

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