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Training Conditional Random Fields with Multivariate Evaluation Measures

机译:用多元评估方法训练条件随机场

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摘要

This paper proposes a framework for training Conditional Random Fields (CRFs) to optimize multivariate evaluation measures, including non-linear measures such as F-score. Our proposed framework is derived from an error minimization approach that provides a simple solution for directly optimizing any evaluation measure. Specifically focusing on sequential segmentation tasks, i.e. text chunking and named entity recognition, we introduce a loss function that closely reflects the target evaluation measure for these tasks, namely, segmentation F-score. Our experiments show that our method performs better than standard CRF training.
机译:本文提出了一个用于训练条件随机场(CRF)的框架,以优化多元评估措施,包括非线性措施(例如F评分)。我们提出的框架源自错误最小化方法,该方法提供了直接优化任何评估指标的简单解决方案。我们特别关注顺序分段任务,即文本分块和命名实体识别,我们引入了一个损失函数,该函数紧密反映了这些任务的目标评估指标,即分段F评分。我们的实验表明,我们的方法比标准CRF训练的效果更好。

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