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Multi-label Text Classification with Deep Neural Networks

机译:深度神经网络的多标签文本分类

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Text classification is a foundational task in natural language processing (NLP). Traditional methods rely heavily on human-designed features, while deep learning models based on neural networks can automatically capture contextual information. We explore and introduce various neural network architectures to extract information and key components in texts. An extensive set of experiments and comparisons on accuracy, speed, memory-consumption are conducted. Methods based on the proposed models won the first place in the Zhihu Machine Learning Challenge 2017. The code has been made publicly available
机译:文本分类是自然语言处理(NLP)的基本任务。传统方法严重依赖于人类设计的功能,而基于神经网络的深度学习模型可以自动捕获上下文信息。我们探索并介绍了各种神经网络架构,以提取文本中的信息和关键组成部分。在准确性,速度,内存消耗方面进行了广泛的实验和比较。基于提出的模型的方法在“ 2017年智虎机器学习挑战赛”中获得第一名。该代码已公开发布

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