Title of article :
Agent Assistants for Team Analysis
Author/Authors :
Tambe، Milind نويسنده , , TaylorRaines، نويسنده , , StacyMarsella، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2000
Pages :
-26
From page :
27
To page :
0
Abstract :
With the growing importance of multiagent teamwork, tools that can help humans analyze, evaluate, and understand team behaviors are also becoming increasingly important. To this end, we are creating isaac, a team analyst agent for post hoc, offline agent-team analysis. ISAACʹS novelty stems from a key design constraint that arises in team analysis: Multiple types of models of team behavior are necessary to analyze different granularities of team events, including agent actions, interactions, and global performance. These heterogeneous team models are automatically acquired by machine learning over teamsʹ external behavior traces, where the specific learning techniques are tailored to the particular model learned. Additionally, ISAAC uses multiple presentation techniques that can aid human understanding of the analyses. This article presents ISAACʹS general conceptual framework and its application in the RoboCup soccer domain, where ISAAC was awarded the RoboCup Scientific Challenge Award.
Keywords :
patient dose , neurointerventional procedures , potential for skin damage
Journal title :
AI Magazine
Serial Year :
2000
Journal title :
AI Magazine
Record number :
2638
Link To Document :
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