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Accurate Maximum-Margin Training for Parsing With Context-Free Grammars

机译:使用上下文无关文法进行语法分析的准确最大利润率训练

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摘要

The task of natural language parsing can naturally be embedded in the maximum-margin framework for structured output prediction using an appropriate joint feature map and a suitable structured loss function. While there are efficient learning algorithms based on the cutting-plane method for optimizing the resulting quadratic objective with potentially exponential number of linear constraints, their efficiency crucially depends on the inference algorithms used to infer the most violated constraint in a current iteration. In this paper, we derive an extension of the well-known Cocke-Kasami-Younger (CKY) algorithm used for parsing with probabilistic context-free grammars for the case of loss-augmented inference enabling an effective training in the cutting-plane approach. The resulting algorithm is guaranteed to find an optimal solution in polynomial time exceeding the running time of the CKY algorithm by a term, which only depends on the number of possible loss values. In order to demonstrate the feasibility of the presented algorithm, we perform a set of experiments for parsing English sentences.
机译:自然语言解析的任务可以自然地嵌入到最大利润框架中,以使用适当的联合特征图和适当的结构损失函数进行结构化输出预测。虽然存在基于切面法的高效学习算法,以优化具有潜在指数数量的线性约束的二次目标,但它们的效率关键取决于用于推断当前迭代中最违反约束的推理算法。在本文中,我们推导了著名的Cocke-Kasami-Younger(CKY)算法的扩展,该算法用于基于概率增加的上下文无关文法的解析,以应对损失增加的推理,从而能够有效地进行剖切面方法的训练。保证所得算法能够在多项式时间中找到最佳解,该多项式时间比CKY算法的运行时间长一个项,该项仅取决于可能损失值的数量。为了证明所提出算法的可行性,我们进行了一组解析英语句子的实验。

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