4 CONCLUSIONS AND FUTURE
WORK
In this paper, it is proposed an electronic market
modeled as a multi-agent system to expand a com-
pany’s solution space regarding disruptions manage-
ment. This electronic market provides alternative
solutions to companies affected by disruptions, us-
ing resources from other companies (and, as such,
contributing to increase collaboration between air-
lines), which is achieved through automated negotia-
tion, where agents negotiate the resource’s availability
and price for a disrupted flight. Human validation (at
the AOCC) is also included to compare the solutions
obtained through the EM with the ones obtained with
the company’s own resources. The Seller agent in the
EM uses case-based reasoning to reuse or adapt pre-
vious experiences, to the current negotiation, which is
also a contribution of our work.
Three different scenarios were tested to validate
the concept, as described in section 3. As there were
no available resources for only one disruption in the
electronic market, the success rate is 91.7% consider-
ing the cost reduction parameter and 67.7% consider-
ing both cost and delay minimized.
Possible future directions to improve this work,
could include firstly, different approaches in the
whole process of identifying previous similar expe-
riences (by the seller), like machine learning and q-
learning in order to understand how the agent learn-
ing process influences the negotiation, either in terms
of proposals’ price and availability or in terms of util-
ity for each agent. The methodology used (CBR) can
also be improved by creating better evaluation scenar-
ios and benefiting the accepted proposal (or the tree of
the proposals that lead to the accepted one).
Secondly, the usage of heuristics to combine re-
sources instead of doing all possible combinations,
would be an interesting feature to include. The usage
of clustering algorithms to classify resources (where
the parameters would be availability and/or price) in
order to have a better and more efficient resource
combination is also something to explore.
Finally, it would be worthy to use trust mod-
els to evaluate the electronic market outcome when
considering the relations established between agents
and whether that trust measure would influence the
agents’ behaviour.
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