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From: saswss@hotellng.unx.sas.com (Warren Sarle)
Subject: Re: Noisy vs clean data sets
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Date: Fri, 5 Jan 1996 01:10:04 GMT
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In article <vnams.69.820552704@cox.nsac.ns.ca>, vnams@cox.nsac.ns.ca writes:
|> What general differences are needed in BP NN's when you have very noisy
|> vs clean data sets?

The more noise you have, the more training data you need. See any
textbook on regression, such as:

   Sanford Weisberg (1985), _Applied Linear Regression_, NY: Wiley

   Raymond H. Myers (1986), _Classical and Modern Regression with
      Applications_, Boston: Duxbury Press

-- 

Warren S. Sarle       SAS Institute Inc.   The opinions expressed here
saswss@unx.sas.com    SAS Campus Drive     are mine and not necessarily
(919) 677-8000        Cary, NC 27513, USA  those of SAS Institute.
