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Learning to be Rational Using Neural Networks

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Author Info
David Kelly
Jamsheed Shorish

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File URL: http://littlehurt.tepper.cmu.edu/gsiadoc/bighurt/Dave_Kelly/learning_rational.pdf
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Paper provided by Carnegie Mellon University, Tepper School of Business in its series GSIA Working Papers with number 6.

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Handle: RePEc:cmu:gsiawp:6

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This page was last updated on 2008-8-13.


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