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ENHANCED LEARNING WITH FEEDBACK LOOP FOR MACHINE READING COMPREHENSION MODELS

机译:使用反馈环增强学习,以实现机器阅读理解模型

摘要

The present disclosure provides an approach for training a machine learning model by first training the model on a generic dataset and then iteratively training the model on “easy” domain specific training data before moving on to “difficult” domain specific training data. Inputs of a domain-specific dataset are run on the generically-trained model to determine which inputs generate an accuracy score above a threshold. The inputs with an accuracy score above a threshold are used to retrain the model, along with the corresponding outputs. The retraining continues until all domain specific dataset has been used to train the model, or until no remaining inputs of the domain specific dataset generate an accuracy score, when run on the model, that is above a threshold.
机译:本公开提供了一种用于训练机器学习模型的方法,该方法是首先在通用数据集上训练模型,然后在转到“困难”领域特定训练数据之前,在“简单”领域特定训练数据上迭代训练模型。在通用训练的模型上运行特定于域的数据集的输入,以确定哪些输入产生的阈值以上的准确性得分。精度得分高于阈值的输入与相应的输出一起用于重新训练模型。重新训练将继续进行,直到使用了所有特定领域数据集来训练模型为止,或者直到在模型上运行时,没有特定领域数据集的剩余输入都生成准确性得分为止,该得分高于阈值。

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