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Recurrent Convolutional Attention Neural Model for Sentiment Classification of short text

机译:递归卷积注意神经模型用于短文情感分类

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Nowadays neural attention model doing good in many tasks of natural language processing (NLP). More specifically attention mechanism has been used widely with convolutional neural network (CNN) and recurrent neural network (RNN) for many task of NLP. But the sentiment classification of short text is a challenging task because it contains limited contextual information. Thus, we proposed a new recurrent convolutional attention neural model for sentiment classification of the short text by using attention mechanism with RCNN (recurrent convolutional neural network). In proposed model attention score is calculated by averaging hidden units (feature maps) generated from LSTM (long short-term memory). Then we combined this attention score with recurrent convolution-based encoded text features to get final sentence representation. Here attention will focus on important text features and recurrent convolution makes full use of limited contextual information by processing sentence representation through different windows sizes with specialized recurrent convolution operation. Validation of the proposed model is done through experimentation with three benchmark datasets i.e. MR, SSTl, and SST2. Achieved results exhibit that our model performs better than many existing baselines works on all three datasets.
机译:如今,神经注意力模型在自然语言处理(NLP)的许多任务中表现出色。更具体地说,注意力机制已被卷积神经网络(CNN)和递归神经网络(RNN)广泛用于NLP的许多任务。但是短文本的情感分类是一项具有挑战性的任务,因为它包含的上下文信息有限。因此,我们通过利用RCNN(递归卷积神经网络)的注意力机制,提出了一种新的递归卷积注意神经模型,用于短文本的情感分类。在建议的模型中,注意力得分是通过对LSTM(长时短期记忆)所生成的隐藏单元(特征图)进行平均来计算的。然后,我们将该注意力分数与基于循环卷积的编码文本特征相结合,以获得最终的句子表示。在这里,注意力将集中在重要的文本特征上,循环卷积通过专门的循环卷积运算通过不同窗口大小处理句子表示,从而充分利用有限的上下文信息。通过对三个基准数据集(即MR,SST1和SST2)进行实验来完成对所提出模型的验证。取得的结果表明,我们的模型在这三个数据集上的表现均优于许多现有的基准工作。

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