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Adaptive Scaling for Sparse Detection in Information Extraction

机译:信息提取中稀疏检测的自适应缩放

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This paper focuses on detection tasks in information extraction, where positive instances are sparsely distributed and models are usually evaluated using F-measure on positive classes. These characteristics often result in deficient performance of neural network based detection models. In this paper, we propose adaptive scaling, an algorithm which can handle the positive sparsity problem and directly optimize over F-measure via dynamic cost-sensitive learning. To this end. we borrow the idea of marginal utility from economics and propose a theoretical framework for instance importance measuring without introducing any additional hyper-parameters. Experiments show that our algorithm leads to a more effective and stable training of neural network based detection models.
机译:本文着重于信息提取中的检测任务,其中正实例稀疏分布,并且通常使用F-measure对正类进行评估。这些特征通常导致基于神经网络的检测模型的性能不足。在本文中,我们提出了自适应缩放,该算法可以处理正稀疏问题并通过动态的成本敏感型学习直接对F-measure进行优化。为此。我们从经济学中借用了边际效用的概念,并提出了一个重要性评估的理论框架,而没有引入任何其他超参数。实验表明,我们的算法可以更有效,更稳定地训练基于神经网络的检测模型。

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