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List poisoning
Anti-spam technique
Anti-spam technique
The term list poisoning refers to poisoning an e-mail mailing list with invalid e-mail addresses.
Industry uses
Once a mailing list has been poisoned with a number of invalid e-mail addresses, the resources required to send a message to this list has increased, even though the number of valid recipients has not. If one can poison a spammer's mailing list, one can force the spammer to exhaust more resources to send e-mail, in theory costing the spammer money and time.
Poisoning spammers' mailing lists is usually done by blacklists submitting fake information to email submit style offers, or by posting invalid email addresses in a Usenet forum or on a web page where spammers are believed to harvest email addresses for their mailing lists.
Vulnerabilities
- Syntactically invalid email addresses used to poison a mailing list could be easily filtered out by the spammers, while using email addresses that are syntactically correct could cause problems for the mail server responsible for the email address.
- Implementations of spam poisoning systems can be avoided, if spammers learn of their location (e. g., they could automatically filter out any address containing "spampoison.com").
- Spammers often steal resources so that the efficiency of a mailing places little financial burden on the spammer.
References
References
- (April 1, 2009). "Avoid E-Mail List Poisoning".
This article was imported from Wikipedia and is available under the Creative Commons Attribution-ShareAlike 4.0 License. Content has been adapted to SurfDoc format. Original contributors can be found on the article history page.
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