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This reminded me of a computer-generated text so I sought for Markov chain text generators. Here's one for example. Study its output (links are near the bottom of the page) and it'll be the same kind of "nonsense making sense".
Bayesian filtering is a kind of "inverse" of Markov chain text generation - both methods are based on statistics. The problem with the Markov-generated text is that its statistical properties closely match those of real text, so the Bayesian filter doesn't classify them as spam.
Generating garbage with required statistical properties is relatively easy; it just requires a list of words and a good Markov model. Once generated, it requires real human understanding for classification.
I didn't study theory behind Markov processes and Bayesian filtering deepely. I might be talking half-rubbish :) But given the amount and kind of spam that gets through the filter, I have a feeling that spammers are slowly winning the battle.
1 comment:
Actually, we're talking almost the same.
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