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New Method of Spam Filtering

Alephcat writes "A simple and easily implemented scheme for combating e-mail spam has been devised by two researchers in the United States. P. Oscar Boykin and Vwani Roychowdhury of the University of California, Los Angeles use their method to exploit the structure of social networks to quickly determine whether a given message comes from a friend or a spammer. The method works for only about half of all e-mails received - but in all of those cases, it sorts the mail into the right category. The article was published on Nature magazines website earlier today."

3 of 326 comments (clear)

  1. Easily spoofed? by Sam+Ruby · · Score: 5, Insightful

    What's to stop the From:, To:, and Cc: fields from being spoofed (like a lot of viruses do)?

    --
    - Sam Ruby
  2. This method will ruin a cool part of the net by The+Wing+Lover · · Score: 5, Insightful

    Used to be that one of the cool things about the net was that you would get email from total strangers... "Hi, I'm from {some far away place}. I saw your {Usenet post|web page|profile on some bulletin board site} and really liked your ideas about {something}. I've also been experimenting with {something} and I have some ideas about {whatever}..."

    Now, if we only have emails from our (already existing) friends or friends of friends, then how will we ever meet anybody new?

    --

    - In Capitalist America, law violates YOU!

  3. Some of us rely on e-mail from strangers by beagle72 · · Score: 5, Insightful

    The proposed anti-spam clustering technique is of course a variation on whitelisting. While clever, it fails to address a problem I have not often seen addressed. Many people defend themselves from spam by obscuring their e-mail addresses in public places, and perhaps by using whitelists to prefer known senders. This may be effective for many people.

    However, some of us can't avoid having a publically available e-mail address. For example, writers such as myself rely on feedback from readers who are, in nearly all cases, strangers (and sometimes strange, but that's another story...) Avoiding false positives from strangers is very important to me. I want their messages. But, since my e-mail address is published frequently (hence no reason to hide it here), I obviously receive a ton of spam.

    For the past few months I have experimented with a plug-in called BayesIt! for the Windows email reader The Bat!. As the name implies, it's a bayesian filter. The nice thing about BayesIt is that I could point it to my already-stuffed spam folder and train it on thousands of messages in one go. So far it has worked out rather well. No false positives, and only about 10-20 false negatives per day (out of approx. 400 spams).

    Still, in the long run I support proposals that shift the economics of e-mail in ways that have minimal impact on human beings while making spam unprofitable. Changing the economic model of spam is the only sure solution; relying solely on technology will simply keep us locked in an ongoing arms race.

    -Aaron