Entry Pendrith:1996:RLR from lncs1996a.bib
Last update: Mon Mar 13 02:22:27 MDT 2017
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BibTeX entry
@Article{Pendrith:1996:RLR,
author = "M. Pendrith and M. Ryan",
title = "Reinforcement Learning for Real-World Control
Applications",
journal = j-LECT-NOTES-COMP-SCI,
volume = "1081",
pages = "257--??",
year = "1996",
CODEN = "LNCSD9",
ISSN = "0302-9743 (print), 1611-3349 (electronic)",
ISSN-L = "0302-9743",
bibdate = "Wed Aug 14 09:38:08 MDT 1996",
bibsource = "http://www.math.utah.edu/pub/tex/bib/lncs1996a.bib",
acknowledgement = ack-nhfb,
}
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