Changes between Version 93 and Version 94 of OpponentModels


Ignore:
Timestamp:
04/27/11 21:02:46 (14 years ago)
Author:
mark
Comment:

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  • OpponentModels

    v93 v94  
    350350||'''Cited'''||5||
    351351||'''Subject(s)'''||||
    352 ||'''Summary'''||||
    353 ||'''Relevance'''||||
     352||'''Summary'''||The used method assumes that domain knowledge is available to partition the search space. Each turns, the agents communicate [[br]]the space where an agreement is possible. Each turn there is a negotiation between all agents to find a common space, which [[br]]means that the agent recommunicate a refined space of agreement until an agreement is reached. The proces continues until [[br]]a common decision is found (a decision is an element in the space of agreement). A learning algorithm can be used as follows: [[br]]first the full domain space is split into zones, which are allocated a uniform chance. This chance is updated for each region [[br]]for each agent based on the received space of agreement. When agents do not agree about the space, then a the space is chosen [[br]]which has the maximum support based on the chances of each space for each agent. This leads to a higher chance of agreement.
     353||
     354||'''Relevance'''||3, domain knowledge required and only considers one issue||
    354355||'''Bibtex'''||[http://scholar.google.nl/scholar.bib?q=info:8EOwrOyBdv0J:scholar.google.com/&output=citation&hl=nl&as_sdt=0,5&ct=citation&cd=0 Link]||
    355356||'''Cites seen'''||Yes||