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A new short text sentimental classification method based on multi-mixed convolutional neural network

机译:基于多重混合卷积神经网络的短文本情感分类新方法

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Almost all e-commerce platforms provide online product comments service. The comments are some words of mouth about the products. Customers usually reference the comments to make an informal decision when buying similar products. In addition, companies would like to know the feedbacks about the products through the comments. However, the typical big data characteristic and noisy short text data characteristic make the online comment data analysis becoming a challenge work. In this work, we propose aMulti-Mixed Convolutional Neural Network(MMCNN) model to analyze the sentiment of online product comments. We mix the convolution and pooling features in mixed layer to enhance effectiveness of the online comments sentimental analysis. The skip-gram model is used to train the word vector. Because the length of each comment is not fixed, two new empirical matrix filling methods are designed which are cyclic matrix filling and random matrix filling. We apply our approach for two datasets which are online comments about infant power crawled from www.jd.com and online reviews about hotel crawled from www.elong.com. Experiment results demonstrate the effectiveness of our approach in comparison with Support Vector Machine, Maximum Entropy, Naive Bayesian and classic CNN.
机译:几乎所有的电子商务平台都提供在线产品评论服务。评论是关于产品的口口相传。客户通常会在购买类似产品时参考这些评论做出非正式决定。此外,公司希望通过评论了解有关产品的反馈。然而,典型的大数据特征和嘈杂的短文本数据特征使得在线评论数据分析成为一项挑战性的工作。在这项工作中,我们建议 混合卷积神经网络< / i> ( MMCNN )模型来分析在线产品评论的情绪。我们在混合层中混合了卷积和池化功能,以增强在线评论情感分析的有效性。跳过语法模型用于训练单词向量。由于每个注释的长度都不固定,因此设计了两种新的经验矩阵填充方法,即循环矩阵填充和随机矩阵填充。我们将我们的方法应用于两个数据集,这两个数据集是有关从www.jd.com检索到的有关婴儿用电的在线评论,以及有关从www.elong.com检索到的有关酒店的在线评论。实验结果表明,与支持向量机,最大熵,朴素贝叶斯和经典CNN相比,我们的方法是有效的。

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