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Deep Neural Networks Ensemble with Word Vector Representation Models to Resolve Coreference Resolution in Russian

机译:深度神经网络与Word Vector表示模型合并,以解决俄语的Coreference分辨率

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In this paper we present a novel neural networks ensemble to solve the task of coreference resolution in Russian texts. The ensemble consists of several neural networks, each based on recurrent Bidirectional long short-term memory layers (BiLSTM), attention mechanism, consistent scoring with selection of probable mentions and antecedents. The applied neural network topology has already shown state-of-the-art results in English for this task, and is now adapted for the Russian language. The resulting coreference markup is obtained by aggregating output scores from several blocks of independently trained neural network models. To represent an input source text, a combination of word vectors from two language models is used. We study the dependence of the coreference detection accuracy on various combinations of models of vector representation of words along with two tokenization approaches: gold markup or UDpipe tools. Finally, to show the improvement made by our ensemble approach, we present the results of experiments with both RuCor and AnCor datasets.
机译:在本文中,我们提出了一种新颖的神经网络,可以解决俄罗斯文本中的Coreference解决方案的任务。该集合由几个神经网络组成,每个网络基于经常性双向长期短期记忆层(BILSTM),注意机制,始终如一的评分,具有选择可能的提升和前一种。应用的神经网络拓扑已经显示出最先进的English的这项任务,现在适用于俄语。通过从独立培训的神经网络模型的多个块聚合输出分数来获得所得到的芯推标。要表示输入源文本,使用来自两个语言模型的字向量的组合。我们研究了Coreference检测准确性对单词的矢量表示模型的各种组合以及两种标记方法:金标记或UDPIPE工具。最后,为了展示我们的集合方法所做的改进,我们介绍了rucor和ancor数据集的实验结果。

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