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Three-way enhanced convolutional neural networks for sentence-level sentiment classification

机译:三方增强型卷积神经网络,用于句子级情绪分类

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Deep neural network models have achieved remarkable results in sentiment classification. Traditional feature-based methods perform slightly worse than deep learning methods in terms of classification accuracy, but they have their own advantages in interpretability and time complexity. To the best of our knowledge, few works study the ensemble of deep learning methods and traditional feature-based methods. Inspired by the methodology of three-way decisions, we proposed a three-way enhanced convolutional neural network model named 3W-CNN. 3W-CNN can be seen as an ensemble method which uses the enhance model to optimize convolutional neural networks (CNN). The enhance model is selected according to the classification accuracy and the difference in classification results compared to CNN. Support vector machine with naive bayes features (NB-SVM) is selected as the enhance model after comparing with several baseline models. However, the performance of NB-SVM is worse than CNN on most of benchmark datasets. To address this issue, we construct a component named confidence divider and design a confidence function to distinguish the classification quality of CNN. NB-SVM is further utilized to reclassify the predictions with weak confidence. The experimental results validated the effectiveness of 3W-CNN and showed three-way decisions could further improve the accuracy of sentiment classification. (C) 2018 Elsevier Inc. All rights reserved.
机译:深度神经网络模型在情绪分类中取得了显着的结果。在分类准确性方面,传统的基于特征的方法比深度学习方法略差,但它们在可解释性和时间复杂性方面具有自己的优势。据我们所知,很少有效地研究深度学习方法和基于传统的特征的方法的集合。灵感来自三元决策的方法,我们提出了一种名为3W-CNN的三通增强型卷积神经网络模型。 3W-CNN可以被视为一种使用增强模型来优化卷积神经网络(CNN)的集合方法。根据分类精度选择增强模型,与CNN相比分类结果的差异。与几个基线模型进行比较后,选择具有天真凸床特征(NB-SVM)的传染媒介机器作为增强模型。但是,在大多数基准数据集中,NB-SVM的性能比CNN更差。为了解决这个问题,我们构建一个名为置信分频器的组件,并设计置信功能以区分CNN的分类质量。 NB-SVM进一步利用以重新分类预测,弱置信度较弱。实验结果验证了3W-CNN的有效性,并显示了三通决策可以进一步提高情绪分类的准确性。 (c)2018年Elsevier Inc.保留所有权利。

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