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ABCDM: An Attention-based Bidirectional CNN-RNN Deep Model for sentiment analysis

机译:ABCDM:一种基于注意的双向CNN-RNN深度模型,具有情感分析

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Sentiment analysis has been a hot research topic in natural language processing and data mining fields in the last decade. Recently, deep neural network (DNN) models are being applied to sentiment analysis tasks to obtain promising results. Among various neural architectures applied for sentiment analysis, long short-term memory (LSTM) models and its variants such as gated recurrent unit (GRU) have attracted increasing attention. Although these models are capable of processing sequences of arbitrary length, using them in the feature extraction layer of a DNN makes the feature space high dimensional. Another drawback of such models is that they consider different features equally important. To address these problems, we propose an Attention-based Bidirectional CNN-RNN Deep Model (ABCDM). By utilizing two independent bidirectional LSTM and GRU layers, ABCDM will extract both past and future contexts by considering temporal information flow in both directions. Also, the attention mechanism is applied on the outputs of bidirectional layers of ABCDM to put more or less emphasis on different words. To reduce the dimensionality of features and extract position-invariant local features, ABCDM utilizes convolution and pooling mechanisms. The effectiveness of ABCDM is evaluated on sentiment polarity detection which is the most common and essential task of sentiment analysis. Experiments were conducted on five review and three Twitter datasets. The results of comparing ABCDM with six recently proposed DNNs for sentiment analysis show that ABCDM achieves state-of-the-art results on both long review and short tweet polarity classification.
机译:情绪分析是过去十年中的自然语言处理和数据挖掘领域的热门研究课题。最近,深神经网络(DNN)模型正在应用于情绪分析任务以获得有希望的结果。在应用于情感分析的各种神经架构中,长短短期记忆(LSTM)模型及其变体,如门控复发单元(GU)吸引了越来越多的关注。尽管这些模型能够处理任意长度的序列,但是在DNN的特征提取层中使用它们使得特征空间高维度。这些模型的另一个缺点是他们认为不同的功能同样重要。为了解决这些问题,我们提出了一种基于关注的双向CNN-RNN深度模型(ABCDM)。通过利用两个独立的双向LSTM和GRU层,ABCDM将通过考虑两个方向上的时间信息来提取过去和未来的环境。此外,注意机制应用于ABCDM的双向层的输出,以或多或少强调不同的单词。为了减少特征和提取位置不变的本地特征的维度,ABCDM利用卷积和汇集机制。 ABCDM的有效性对情绪极性检测评估,这是情感分析的最常见和基本任务。实验是在五次审查和三个Twitter数据集进行的。将ABCDM与六个最近提出的情绪分析的结果进行比较结果表明,ABCDM对长期审查和短发布极性分类实现最先进的结果。

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