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Learning to recognize opinion targets using recurrent neural networks

机译:学习使用递归神经网络识别意见目标

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摘要

Opinion target recognition can be deemed a problem of token-level sequence labelling, and each word in the sentence is assigned to a label with the standard BIO tagging scheme. Among a variety of methods, recently emerged recurrent neural network (RNN) is considered more effective to deal with such kinds of sequence annotation problem. Whereas existing RNN models mainly focus on learning the dependency relationships in the input sequence while ignoring the ones in the output sequence. To this end, we proposed an augmented RNN model called OLSRNN. The OLSRNN model adds self-connections to the output layer on the basics of conventional RNN models to further capture output temporal dependencies. Over the benchmark customer review datasets, experiment results demonstrate the effectiveness of the proposed approach in opinion target recognition in comparison with other baseline methods. (c) 2018 Elsevier B.V. All rights reserved.
机译:可以将意见目标识别视为令牌级序列标记的问题,并且使用标准BIO标记方案将句子中的每个单词分配给一个标记。在多种方法中,最近出现的递归神经网络(RNN)被认为更有效地处理了此类序列注释问题。现有的RNN模型主要侧重于学习输入序列中的依赖关系,而忽略输出序列中的依赖关系。为此,我们提出了一种称为OLSRNN的增强RNN模型。 OLSRNN模型在常规RNN模型的基础上将自连接添加到输出层,以进一步捕获输出时间相关性。在基准客户评论数据集上,实验结果证明了与其他基准方法相比,该方法在意见目标识别中的有效性。 (c)2018 Elsevier B.V.保留所有权利。

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