Sender Recognition of E-mail & Email Categorization
نویسندگان
چکیده
منابع مشابه
Sender ID: Authenticating E-Mail
Internet mail suffers from the fact that much unwanted mail is sent using spoofed addresses -"spoofed" in this case means the address is used without the permission of the domain owner. This document describes a family of tests by which SMTP servers can determine whether an e-mail address in a received message was used with the permission of the owner of the domain contained in that e-mail addr...
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E-mail is the most common mode of communication today. E-mail not only used for sending messages/text only but also to send audio, video and other files as attachment. It is main resource for business communication. As it is most popular and common mode of communication on internet, it also attracts criminals or persons having mischievous intent. Cyber criminals misuse it for sending spam, thre...
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Automated e-mail answering with a standard answer is a text categorization task. Text categorization by matching manual text patterns to messages yields good performance if the text categories are specific. Given that manual text patterns embody informal human perception of important wording in a written inquiry, it is interesting to investigate more formal traits of this important wording, suc...
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With the amount of unsolicited emails on the rise, domain authentication schemes have been widely deployed to identify senders. Establishing a sender's identity does not guarantee its adherence to best practices. To maintain a history of sender activity, in our prior work, we had proposed RepuScore: a collaborative sender reputation framework and demonstrated its effectiveness using simulated l...
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ژورنال
عنوان ژورنال: IJARCCE
سال: 2017
ISSN: 2278-1021
DOI: 10.17148/ijarcce.2017.6621