<?xml version="1.0" encoding="UTF-8" ?>
<modsCollection xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns="http://www.loc.gov/mods/v3" xmlns:slims="http://slims.web.id" xsi:schemaLocation="http://www.loc.gov/mods/v3 http://www.loc.gov/standards/mods/v3/mods-3-3.xsd">
<mods version="3.3" id="4002">
 <titleInfo>
  <title>Stochastic learning and optimization :</title>
  <subTitle>a sensitivity-based approach</subTitle>
 </titleInfo>
 <name type="Personal Name" authority="">
  <namePart>Cao, Xi-Ren</namePart>
  <role>
   <roleTerm type="text">Primary Author</roleTerm>
  </role>
 </name>
 <typeOfResource manuscript="no" collection="yes">mixed material</typeOfResource>
 <genre authority="marcgt">bibliography</genre>
 <originInfo>
  <place>
   <placeTerm type="text">New York</placeTerm>
   <publisher>Springer</publisher>
   <dateIssued>2007</dateIssued>
  </place>
 </originInfo>
 <language>
  <languageTerm type="code">en</languageTerm>
  <languageTerm type="text">English</languageTerm>
 </language>
 <physicalDescription>
  <form authority="gmd">Text</form>
  <extent>xix, 566 p. : Illust. ; 24 cm</extent>
 </physicalDescription>
 <note>&quot;Stochastic learning and optimization is a multidisciplinary subject that has wide applications in modern engineering, social, and financial problems, including those in Internet and wireless communications, manufacturing, robotics, logistics, biomedical systems, and investment science. This book is unique in the following aspects: This book covers various disciplines in learning and optimization, including perturbation analysis (PA) of discrete-event dynamic systems, Markov decision processes (MDP)s, reinforcement learning (RL), and adaptive control, within a unified framework. This book introduces MDP theory through a simple approach based on performance difference formulas. This approach leads to results for the n-bias optimality with long-run average-cost criteria and Blackwell's optimality without discounting. This book introduces the recently developed event-based optimization approach, which opens up a research direction in overcoming or alleviating the difficulties due to the curse of dimensionality issue by utilizing the system's special features. This book emphasizes physical interpretations based on the sample-path construction. This book also includes over 100 figures and 200 problems.&quot;--Jacket.</note>
 <note type="statement of responsibility"></note>
 <subject authority="">
  <topic>Computer Science</topic>
 </subject>
 <subject authority="">
  <topic>Computational Complexity</topic>
 </subject>
 <subject authority="">
  <topic>Artificial Intelligence</topic>
 </subject>
 <subject authority="">
  <topic>Mathematical Optimization</topic>
 </subject>
 <subject authority="">
  <topic>Learning models (Stochastic processes)</topic>
 </subject>
 <subject authority="">
  <topic>Distribution (Probability theory)</topic>
 </subject>
 <classification>519.23</classification>
 <identifier type="isbn">9780387367873</identifier>
 <location>
  <physicalLocation>e-Library Universitas Pertamina Be Global Leader</physicalLocation>
  <shelfLocator>519.23 CAO s</shelfLocator>
  <holdingSimple>
   <copyInformation>
    <numerationAndChronology type="1">7299/PUP/2019</numerationAndChronology>
    <sublocation>Perpustakaan Universitas Pertamina</sublocation>
    <shelfLocator>519.23 CAO s c.1</shelfLocator>
   </copyInformation>
  </holdingSimple>
 </location>
 <slims:image>sto.jpg.jpg</slims:image>
 <recordInfo>
  <recordIdentifier>4002</recordIdentifier>
  <recordCreationDate encoding="w3cdtf">2019-01-21 14:16:59</recordCreationDate>
  <recordChangeDate encoding="w3cdtf">2019-01-22 14:36:54</recordChangeDate>
  <recordOrigin>machine generated</recordOrigin>
 </recordInfo>
</mods>
</modsCollection>