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Uncertainty Estimation for Black-Box Classification Models: A Use Case for Sentiment Analysis

机译:黑匣子分类模型的不确定性估算:一种情绪分析的用例

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With the advent of new pre-trained word embedding models like ELMO, GPT or BERT, that leverage transfer-learning to deliver high-quality prediction systems, natural language processing (NLP) methods are reaching or even overtaking human baselines in some applications. The basic principle of these successful models is to train a model to solve a given NLP task, mainly Language Modelling, using significant volumes of data like the whole Wikipedia. The model is then fine-tuned to solve another NLP task, requiring fewer domain-specific data to achieve state-of-the-art accuracies. The method proposed in the present work assists the practitioner in evaluating the quality of the transferred classification models when applied to new data domains. In this case, we consider the original model as a black box. No matter how complex the original model may be, the method only requires access to the output layer to train a measure of the uncertainty associated with the predictions of the original model. This measure of uncertainty is a measure of how well the black-box model accommodates to the new data. Later on, we show how a rejection system can use this uncertainty to improve its accuracy, effectively enabling the practitioner to find the best trade-off between the quality of the model and the number of rejected cases.
机译:随着新的预先训练字嵌入模型,如ELMO,GPT或BERT,即杠杆转移学习提供高质量的预报系统,自然语言处理(NLP)方法达到甚至超越某些应用人类基线来临。这些成功的模式的基本原理是训练一个模型来解决给定的NLP任务,主要是语言模型,使用类似于维基百科的全部数据的显著卷。该模型然后微调,以解决另一个NLP的任务,需要更少的域特定的数据,以实现状态的最先进的精度。在目前的工作中提出的方法有助于当施加到新的数据域评估转移分类模型的质量的从业者。在这种情况下,我们认为原来的模型作为一个黑盒子。不管原来的模型可能多么复杂,该方法只需要访问输出层训练与原始模型的预测相关的不确定性的度量。不确定性的度量是黑盒模型如何适应新的数据的措施。后来,我们展示了一个剔除系统如何使用这种不确定性,以提高其精度,有效地发挥医生找到最好的权衡模型的质量和拒绝的个案数目之间。

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