Title of article :
QUERY BASED APPROACH TOWARDS SPAM ATTACKS USING ARTIFICIAL NEURAL NETWORK
Author/Authors :
Gaurav Kumar Tak and Shashikala Tapaswi، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
18
From page :
82
To page :
99
Abstract :
Currently, spam and scams are passive attack over the inbox which can initiated to steal someconfidential information, to spread Worms, Viruses, Trojans, cookies and Sometimes they are used forphishing attacks. Spam mails are the major issue over mail boxes as well as over the internet. Spam mailscan be the cause of phishing attack, hacking of banking accounts, attacks on confidential data. Spammingis growing at a rapid rate since sending a flood of mails is easy and very cheap. Spam mails disturb themind-peace, waste time and consume various resources e.g., memory space and network bandwidth, sofiltering of spam mails is a big issue in cyber security. This paper presents an novel approach of spam filtering which is based on some query generatedapproach on the knowledge base and also use some artificial neural network methods to detect the spammails based on their behavior. analysis of the mail header, cross validation. Proposed methodologyincludes the 7 several steps which are well defined and achieve the higher accuracy. It works well with allkinds of spam mails (text based spam as well as image spam). Our tested data and experiments resultsshows promising results, and spam’s are detected out at least 98.17 % with 0.12% false positive
Keywords :
Scam , Worms & Trojan , virus , Artificial neural network , cross validation , spam
Journal title :
International Journal of Artificial Intelligence & Applications
Serial Year :
2010
Journal title :
International Journal of Artificial Intelligence & Applications
Record number :
668708
Link To Document :
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