TITLE

COMPUTERS THAT LEARN BY DOING

AUTHOR(S)
Bylinsky, Gene; Moore, Alicia Hills; Furth, Jane
PUB. DATE
September 1993
SOURCE
Fortune;9/6/1993, Vol. 128 Issue 5, p96
SOURCE TYPE
Periodical
DOC. TYPE
Article
ABSTRACT
Features programs and chips that mimic the way the brain works. How neural networks recognize and understand patterns; Neural computation as the hottest emerging computer technology; Lexicus Corp.'s Longhand program; Applications in detecting credit card fraud, reading handwriting, trading stocks, improving real estate appraisals and more; What future computers will do. INSETS: Picking the ponies.;Saving on jurors..
ACCESSION #
9308200103

 

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