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From computer vision to short text understanding: Applying similar approaches into different disciplines

机译:从计算机视觉到简短的文本理解:将类似的方法应用于不同的学科

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摘要

With the development of IoT and 5G technologies, more and more online resources are presented in trendy multimodal data forms over the Internet. Hence, effectively processing multimodal information is significant to the development of various online applications, including e-Iearning and digital health, to just name a few. However, most AI-driven systems or models can only handle limited forms of information. In this study, we investigate the correlation between natural language processing (NLP) and pattern recognition, trying to apply the mainstream approaches and models used in the computer vision (CV) to the task of NLP. Based on two different Twitter datasets, we propose a convolutional neural network based model to interpret the content of short text with different goals and application backgrounds. The experiments have demonstrated that our proposed model shows fairly competitive performance compared to the mainstream recurrent neural network based NLP models such as bidirectional long short-term memory (Bi-LSTM) and bidirectional gate recurrent unit (Bi-GRU). Moreover, the experimental results also demonstrate that the proposed model can precisely locate the key information in the given text.
机译:随着物联网的发展和5 g技术,提出了越来越多的网络资源时髦的多通道数据形式在互联网上。因此,有效地处理多通道信息的发展具有重要意义各种在线应用程序,包括e-Iearning和数字健康,仅举几例。大多数AI-driven系统或模型只能处理有限的形式的信息。调查之间的关系自然语言处理(NLP)和模式识别,试图应用主流计算机视觉中使用的方法和模型(CV) NLP的任务。Twitter的数据集,我们提出一个卷积基于神经网络的模型来解释与不同的目标和内容的简短文本应用背景。证明我们的模型显示公平竞争性能相比基于递归神经网络的NLP的主流双向长期短期等模型内存(Bi-LSTM)和双向门复发单位(Bi-GRU)。证明该模型也可以在给定的精确定位的关键信息文本。

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