26fa54f08c
instantiating a series of machine-generated contexts to serve as a means of contrast. This makes it possible to identify text that is out of context using a form of pattern consistency checking. BNR attempts to solve the problem commonly referred to as "Bayesian Noise" which, in its simplest definition, refers to irrelevant data present in a message being classified. Bayesian Noise Reduction dubs irrelevant text in order to provide cleaner classification and is implemented as a pre-filter to existing language classification functions. PR: ports/78159 Submitted by: Ion-Mihai "IOnut" Tetcu <itetcu@people.tecnik93.com>
16 lines
805 B
Plaintext
16 lines
805 B
Plaintext
Bayesian Noise Reduction is a statistical approach to evaluating coherence by
|
|
instantiating a series of machine-generated contexts to serve as a means of
|
|
contrast. This makes it possible to identify text that is out of context using
|
|
a form of pattern consistency checking. BNR attempts to solve the problem
|
|
commonly referred to as "Bayesian Noise" which, in its simplest definition,
|
|
refers to irrelevant data present in a message being classified. Bayesian Noise
|
|
Reduction dubs irrelevant text in order to provide cleaner classification and
|
|
is implemented as a pre-filter to existing language classification functions.
|
|
|
|
BNR is used in Dspam (mail/dspam, mail/dspam-devel - the ports don't depent on
|
|
this one)
|
|
|
|
See www for white-paper and presentation.
|
|
|
|
WWW: http://www.nuclearelephant.com/papers/bnr.html
|