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Deep learning to filter SMS Spam

机译:深度学习过滤垃圾短信

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The popularity of short message service (SMS) has been growing over the last decade. For businesses, these text messages are more effective than even emails. This is because while 98% of mobile users read their SMS by the end of the day, about 80% of the emails remain unopened. The popularity of SMS has also given rise to SMS Spam, which refers to any irrelevant text messages delivered using mobile networks. They are severely annoying to users. Most existing research that has attempted to filter SMS Spam has relied on manually identified features. Extending the current literature, this paper uses deep learning to classify Spam and Not-Spam text messages. Specifically, Convolutional Neural Network and Long Short-Term Memory models were employed. The proposed models were based on text data only, and self-extracted the feature set. On a benchmark dataset consisting of 747 Spam and 4,827 Not-Spam text messages, a remarkable accuracy of 99.44% was achieved. (C) 2019 Elsevier B.V. All rights reserved.
机译:在过去的十年中,短消息服务(SMS)的普及一直在增长。对于企业而言,这些短信甚至比电子邮件更有效。这是因为,到一天结束时,有98%的移动用户阅读了他们的SMS,而大约80%的电子邮件仍未打开。 SMS的普及也引起了SMS Spam,它是指使用移动网络发送的任何无关的文本消息。它们严重困扰了用户。大多数现有的试图过滤SMS垃圾邮件的研究都依靠手动识别的功能。在扩展当前文献的基础上,本文使用深度学习对垃圾邮件和非垃圾邮件进行分类。具体而言,采用了卷积神经网络和长短期记忆模型。提出的模型仅基于文本数据,并自提取了功能集。在由747个垃圾邮件和4,827个非垃圾邮件组成的基准数据集上,达到了99.44%的卓越准确性。 (C)2019 Elsevier B.V.保留所有权利。

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