基于递归神经网络(LSTM)模型的短信垃圾邮件分类

J. Rajasekhar, T. Hemanth, Anjuman Sk
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摘要

短消息服务(SMS)垃圾邮件是从垃圾邮件发送者发送到移动设备收件箱的不需要的消息。服务提供商担心这些垃圾信息,因为他们的客户会因为手机上的垃圾数据而对服务感到不满。大多数服务提供商都为其客户提供了便利的免打扰(DND)激活功能,以使他们免受大多数垃圾邮件的影响。即使垃圾邮件没有被完全控制,这种邮件的传递也是不可阻挡的。为了克服这个问题,已经进行了广泛的研究。人工智能以其广泛的学习模型和检测的准确性使其成为可能。本文提出了一种基于深度学习模型的短信分类方法。本文采用递归神经网络(RNN)模型,在特定的长短期记忆(LSTM)模型下进行垃圾邮件检测。本研究使用的数据集是从Grumbletext网站上提取的,它总共有425条带有“火腿”和“垃圾邮件”的短信。LSTM模型利用学习模型对短信数据集进行有效分类。实验研究表明,该模型使用LSTM模型对短信垃圾邮件进行分类,准确率达到了88.33%。
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SMS Spam Classification and Through Recurrent Neural Network (LSTM) model
Short messaging service (SMS) spam is the unwanted messages delivered to the inbox of mobile devices from spammers. Service providers are worried about these spam messages as their clients get dissatisfied with services due to the spam data reaching on their mobile phone. There are most of the service providers has given facility Do Not Disturb (DND) activation for their clients to save them from most of the spam messages. Even though the spam messages are not controlled fully, the delivery of such messages are unstoppable. To overcome this issue extensive research has been done. Artificial intelligence made it possible with extensive learning model and accuracy of detection. This paper is proposed to classify short messages as spam or ham based on a deep learning model. In this paper, the spam detection through Recurrent Neural Network (RNN) model, in specific Long Short Term Memory (LSTM) model is used. The dataset used for this study is extracted from Grumbletext website and it has a total 425 short messages with ‘Ham’ and ‘spam’. The LSTM model classified the SMS dataset effectively with the learning model. Experimental study showed that the model has achieved an accuracy of 88.33% accuracy on SMS spam classification with the LSTM model.
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