Title of article
Learning in multi-agent systems: a case study of construction claims negotiation
Author/Authors
Ren، نويسنده , , Z and Anumba، نويسنده , , C.J، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2002
Pages
11
From page
265
To page
275
Abstract
The ability of agents to learn is of growing importance in multi-agent systems. It is considered essential to improve the quality of peer to peer negotiation in these systems. This paper reviews various aspects of agent learning, and presents the particular learning approach—Bayesian learning—adopted in the MASCOT system (multi-agent system for construction claims negotiation). The core objective of the MASCOT system is to facilitate construction claims negotiation among different project participants. Agent learning is an integral part of the negotiation mechanism. The paper demonstrates that the ability to learn greatly enhances agentsʹ negotiation power, and speeds up the rate of convergence between agents. In this case, learning is essential for the success of peer to peer agent negotiation systems.
Keywords
Bayesian learning , Negotiation , Multi-agent systems
Journal title
ADVANCED ENGINEERING INFORMATICS
Serial Year
2002
Journal title
ADVANCED ENGINEERING INFORMATICS
Record number
1384167
Link To Document