Email classification: Solution with back propagation technique

T. Ayodele, Shikun Zhou, R. Khusainov
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引用次数: 1

Abstract

To acquire knowledge by learning automatically from the data, through a process of inference, model fitting, or learning from example is one of the rare field of email management. And when an artificial system can perform "intelligent", tasks similar to those performed by the human brain and such is implemented in email classification, such a system will be is extremely intelligent. Using neural network for email content classification with back propagation is where our technique becomes distinct and effective. This paper proposes a new email classification model using a teaching process of multi-layer neural network to implement back propagation algorithm. Our contributions are: the use of empirical analysis to select an optimum, novel collection of features of a user's email message content that enables the rapid detection of most important words, phrases in emails and a demonstration of the effectiveness of two equal sets of emails (training and testing data).
电子邮件分类:解决方案与反向传播技术
通过推理、模型拟合或从例子中学习的过程,从数据中自动学习来获取知识是电子邮件管理中罕见的领域之一。当一个人工系统可以执行“智能”的任务,类似于人脑所执行的任务,就像在电子邮件分类中实现的那样,这样的系统将是非常智能的。利用神经网络对电子邮件内容进行反向传播分类是我们的技术的独特和有效之处。本文提出了一种新的电子邮件分类模型,利用多层神经网络的教学过程实现反向传播算法。我们的贡献是:使用实证分析来选择用户电子邮件消息内容的最佳,新颖的特征集合,从而能够快速检测电子邮件中最重要的单词,短语,并演示两组相等的电子邮件(训练和测试数据)的有效性。
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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