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Randomized Greedy Inference for Joint Segmentation, POS Tagging and Dependency Parsing

机译:联合细分,POS标记和依赖项解析的随机贪婪推断

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In this paper, we introduce a new approach for joint segmentation, POS tagging and dependency parsing. While joint modeling of these tasks addresses the issue of error propagation inherent in traditional pipeline architectures, it also complicates the inference task. Past research has addressed this challenge by placing constraints on the scoring function. In contrast, we propose an approach that can handle arbitrarily complex scoring functions. Specifically, we employ a randomized greedy algorithm that jointly predicts segmentations, POS tags and dependency trees. Moreover, this architecture readily handles different segmentation tasks, such as morphological segmentation for Arabic and word segmentation for Chinese. The joint model outperforms the state-of-the-art systems on three datasets, obtaining 2.1% TedEval absolute gain against the best published results in the 2013 SPMRL shared task.
机译:在本文中,我们介绍了一种用于联合分段,POS标记和依赖项解析的新方法。这些任务的联合建模解决了传统管道体系结构固有的错误传播问题,但同时也使推理任务变得复杂。过去的研究通过对评分功能施加约束来解决这一挑战。相反,我们提出了一种可以处理任意复杂评分功能的方法。具体来说,我们采用随机贪婪算法来共同预测细分,POS标签和依赖树。此外,该体系结构可轻松处理不同的分割任务,例如针对阿拉伯语的形态学分割和针对中文的字词分割。该联合模型在三个数据集上均优于最新系统,在2013年SPMRL共享任务中,与公布的最佳结果相比,获得2.1%的TedEval绝对增益。

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