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Distance-Free Modeling of Multi-Predicate Interactions in End-to-End Japanese Predicate-Argument Structure Analysis

机译:结束日语谓词论证结构分析中多谓性相互作用的无距离建模

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Capturing interactions among multiple predicate-argument structures (PASs) is a crucial issue in the task of analyzing PAS in lapanese. In this paper, we propose new Japanese PAS analysis models that integrate the label prediction information of arguments in multiple PASs by extending the input and last layers of a standard deep bidirectional recurrent neural network (bi-RNN) model. In these models, using the mechanisms of pooling and attention, we aim to directly capture the potential interactions among multiple PASs, without being disturbed by the word order and distance. Our experiments show that the proposed models improve the prediction accuracy specifically for eases where the predicate and argument are in an indirect dependency relation and achieve a new state of the art in the overall F_1 on a standard benchmark corpus.
机译:捕获多个谓词论证结构之间的交互(通过)是在拉帕尼斯分析PAS任务中的一个至关重要的问题。在本文中,我们提出了新的日语PAS分析模型,通过扩展了标准深度双向复发性神经网络(Bi-RNN)模型的输入和最后一层来集成多次通过的参数的标签预测信息。在这些模型中,使用汇集和注意的机制,我们的目标是直接捕捉多次通过之间的潜在相互作用,而不会被单词顺序和距离所干扰。我们的实验表明,该模型专门提高了预测精度,以便在标准基准语料库上的整体F_1中实现了间接依赖关系并在整体F_1中实现了新的现有技术。

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