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首页> 外文期刊>Mathematical Problems in Engineering >An Integrated Deep Generative Model for Text Classification and Generation
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An Integrated Deep Generative Model for Text Classification and Generation

机译:用于文本分类和生成的集成深度生成模型

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摘要

Text classification and generation are two important tasks in the field of natural language processing. In this paper, we deal with both tasks via Variational Autoencoder, which is a powerful deep generative model. The self-attention mechanism is introduced to the encoder. The modified encoder extracts the global feature of the input text to produce the hidden code, and we train a neural network classifier based on the hidden code to perform the classification. On the other hand, the label of the text is fed into the decoder explicitly to enhance the categorization information, which could help with text generation. The experiments have shown that our model could achieve competitive classification results and the generated text is realistic. Thus the proposed integrated deep generative model could be an alternative for both tasks.
机译:文本分类和生成是自然语言处理领域中的两个重要任务。在本文中,我们通过可变自动编码器处理这两个任务,这是一个功能强大的深度生成模型。自注意力机制被引入编码器。修改后的编码器提取输入文本的全局特征以生成隐藏代码,然后我们基于隐藏代码训练神经网络分类器以执行分类。另一方面,将文本的标签显式地馈送到解码器中以增强分类信息,这可能有助于文本生成。实验表明,我们的模型可以达到竞争性的分类结果,并且生成的文本是真实的。因此,建议的集成深度生成模型可以替代这两项任务。

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