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Gender Identification: A Comparative Study of Deep Learning Architectures

机译:性别识别:深度学习架构的比较研究

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Author profiling, dating back to the earliest attempts at of analyzing quantitative text documents, is an extensivel-studied problem among NLP researchers. Because of its utility in crime, marketing and business. In this paper, three deep learning methods were evaluated for author profiling using tweets in Arabic language. The first method is based on a Convolutional Neural Network (CNN) model, while the second and third technique belongs to the family of Recurrent Neural Networks (RNN). The appropriate choice of some parameters, such as the number of amount of filters, training epochs, batch size, dropout and learning rate of Adam optimizer used in a RNN model is crucial in obtaining reliable results. The experimental findings of our comparative evaluation study demonstrate that GRU model outperforms LSTM and CNN models.
机译:作者分析,可追溯到最早尝试分析定量文本文件的尝试,是NLP研究人员之间的竞争研究。由于其在犯罪,营销和业务中的效用。在本文中,使用阿拉伯语推文评估了三种深入学习方法的作者分析。第一方法基于卷积神经网络(CNN)模型,而第二和第三技术属于经常性神经网络(RNN)。 The appropriate choice of some parameters, such as the number of amount of filters, training epochs, batch size, dropout and learning rate of Adam optimizer used in a RNN model is crucial in obtaining reliable results.我们的比较评估研究的实验结果表明,GRU模型优于LSTM和CNN模型。

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