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Fred Mailhot <[EMAIL PROTECTED]> wrote in message news:<[EMAIL PROTECTED]>... > Greetings... > > I know c.a.n-n isn't exactly the right forum for my question, but as far as > I know, there are no NGs dedicated to machine learning in general. > > Most (all?) theoretical results in learnability and computational learning > theoretic frameworks (I'm thinking especially of PAC-type stuff here) > crucially hinges on the availability of both positive and negative examples > (I'm talking about classification here, obviously)... > > Does anyone know of literature pertaining to: > > 1) algorithms that learn from positive data only ? > > 2) theoretical results on the power of learning from positive examples ? > > Regarding (1), I know that unsupervised learning methods can be construed > this way, but that's not really what I'm thinking of...unfortunately, I > can't specify any better what I AM thinking of...sorry. Mainly it's > theoretical results that I want to see, anyway... See thethread "Binary classifier with single class learning" in the c.a.n-n archhives. Hope this helps. Greg
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