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Dependency Parsing with Dilated Iterated Graph CNNs

机译:用扩张迭代图CNNS解析依赖性解析

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Dependency parses are an effective way to inject linguistic knowledge into many downstream tasks, and many practitioners wish to efficiently parse sentences at scale. Recent advances in GPU hardware have enabled neural networks to achieve significant gains over the previous best models, these models still fail to leverage GPUs' capability for massive parallelism due to their requirement of sequential processing of the sentence. In response, we propose Dilated Iterated Graph Convolutional Neural Networks (DIG-CNNs) for graph-based dependency parsing, a graph convolutional architecture that allows for efficient end-to-end GPU parsing. In experiments on the English Penn TreeBank benchmark, we show that DIG-CNNs perform on par with some of the best neural network parsers.
机译:依赖性解析是将语言知识注入许多下游任务的有效方法,许多从业者希望在规模上有效地解析句子。 GPU硬件的最新进展使神经网络能够通过以前的最佳模型实现显着的涨幅,由于它们要求句子顺序处理的要求,这些模型仍然没有利用GPUS的巨大并行性能力。作为响应,我们提出了扩张的迭代图卷积神经网络(DIG-CNNS),用于基于图形的依赖性解析,一种允许有效的端到端GPU解析的图形卷积架构。在英国宾夕法尼亚银行基准测试中,我们展示了DIG-CNNS与一些最好的神经网络解析器进行了相符。

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