Android-Based Short Message Service Filtering using Long Short-Term Memory Classification Model

M. L. Mustagfirin, G. W. Wiriasto, I. M. B. Suksmadana, I. P. Kinasih
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Abstract

Short Message Service (SMS) is a technology for sending messages in text format between two mobile phones that support such a facility. Despite the emergence of many mobile text messaging applications, SMS still finds its use in communication among people and broadcasting messages by governments and mobile providers. SMS users often receive messages from parties, particularly for marketing and business purposes, advertisements, or elements of fraud. Many of those messages are irrelevant and fraudulent spam. This research aims at developing android-based applications that enable the filtering of SMS in Bahasa Indonesia. We investigate 1469 SMS text data and classify them into three categories: Normal, Fraudulent, and Advertisement. The classification or filtering method is the long short-term memory (LSTM) model from TensorFlow. The LSTM model is suitable because it has cell states in the architecture that are useful for storing previous information. The feature is applicable for use on sequential data such as SMS texts because every word in the texts constructs a sequential form to complete a sentence. The observation results show that the classification accuracy level is 95%. This model is then integrated into an Android-based mobile application to execute a real-time classification.
基于长短期记忆分类模型的android短消息服务过滤
短消息服务(SMS)是一种在支持这种功能的两个移动电话之间以文本格式发送消息的技术。尽管出现了许多移动短信应用程序,SMS仍然在人们之间的通信和政府和移动提供商的广播消息中使用。SMS用户经常收到来自各方的消息,特别是出于营销和商业目的、广告或欺诈元素。其中许多消息是无关的和欺诈性的垃圾邮件。这项研究的目的是开发基于android的应用程序,使短信过滤在印尼语。我们调查了1469条短信数据,并将其分为三类:正常、欺诈和广告。分类或过滤方法是来自TensorFlow的长短期记忆(LSTM)模型。LSTM模型是合适的,因为它在体系结构中具有对存储以前的信息有用的单元状态。该特性适用于SMS文本等顺序数据,因为文本中的每个单词都构建了一个顺序形式来完成一个句子。观察结果表明,分类准确率达到95%。然后将该模型集成到基于android的移动应用程序中,以执行实时分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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