For the values of β lower then 1 the strategy belongs
to Conceder strategy type. For the value of β equal
to 1 the shape of concession curve is linear. For the
values of β higher then 1 the negotiation strategy re-
sulting from the usage of such β values belongs to
Boulware strategy type. The variety of negotiation
strategies used in our experiment aims at investigat-
ing how the two approaches for negotiation perform.
In the Tables 1,2 we present the results of the experi-
ments. For various negotiation strategies we simulate
49 negotiation settings. In the Table 1 we present the
utility values (pay-offs) obtained by the first agent us-
ing the traditional (column u
c
) and proposed (column
u
a
) approaches. As we can see, the utilities obtained
in the scenario where the second approach was used
are not worse or better than utilities obtained in the
scenario where the first approach was used. The sit-
uation is similar for the second agent - the utilities
obtained in the scenario where the second approach
was used are at least as good as the utilities obtained
in scenario where the first approach was used. In the
case of scenario where the second approach was used
the obtained results are best, and can not be further
improved (in terms of Pareto efficiency) under the
assumption of particular preferences and negotiation
strategies. The reason for this observation is the appli-
cation of a specific negotiation protocol which allows
the agents to propose the full α-cuts. Such a protocol
leads to Pareto efficient outcomes since in a particu-
lar round of negotiation the agents propose all feasi-
ble alternatives exceeding the particular level of util-
ity allowed at this stage of negotiation. Therefore, the
second approach results in Pareto efficient outcomes
and therefore outperforms slightly the first approach
which does not guarantee the Pareto efficiency. In the
third Table 3 we present the comparison of numbers
of rounds used to reach agreement in scenarios where
the first and second approach was used (columns u
c
and u
a
, respectively). As we can see the number of
rounds resulting in agreement in the case of classical
approach is approximately twice larger as the num-
ber of rounds used to reach agreement in the case of
proposed approach and therefore it outperforms the
typical, single-alternative approach.
4 CONCLUDING REMARKS AND
FURTHER WORK
The paper presents a novel negotiation protocol for
multi-attribute agent negotiations based on using α-
cuts to determine multi-alternative offers. As shown
in the experiments it allows for improvement of nego-
tiation outcomes in the terms of time needed to reach
an agreement and the Pareto optimality of the out-
come. In addition by allowing the agent to offer a
proposal comprising a set of alternatives we eliminate
the problem of making trade-off in the negotiation.
In the future work the proposed approach will be
tested in scenarios involving different overlaps of ac-
ceptance ranges and different deadlines of the nego-
tiating parties. We will also consider a number of is-
sues, higher than two in further experiments.
REFERENCES
Bichler, M. and Segev, A. (2001). Methodologies for the de-
sign of negotiation protocols on e-markets. Computer
Networks, 37:137–152.
Ethamo, H., Hamalainen, R. P., Heiskanen, P., Teich, J.,
Verkama, M., and Zionts, S. (1999). Generating
pareto solutions in a two-party setting: Constraint pro-
posal methods. Management Science, 45:1697–1709.
Faratin, P., Sierra, C., and Jennings, N. R. (1998). Nego-
tiation among groups of autonomous computational
agents. University of Londond.
Faratin, P., Sierra, C., and Jennings, N. R. (2002). Us-
ing similarity criteria to make issue trade-offs in auto-
mated negotiations. Artificial Intelligence, 142:205–
237.
Fujita, K., Ito, T., and Klein, M. (2010a). Representative-
based protocol for multiple interdependent issue ne-
gotiation problems. Web Intelligence and Intelligent
Agents.
Fujita, K., Ito, T., and Klein, M. (2010b). A secure and fair
protocol that addresses weaknesses of the nash bar-
gaining solution in nonlinear negotiation. Group De-
cision and Negotiation, pages 1–19.
Hattori, H., Klein, M., and Ito, T. (2007). A multi-phase
protocol for negotiation with interdependent issues. In
Proc. of IAT.
Ito, T., Hattori, H., and Klein, M. (2007). Multi-issue nego-
tiation protocol for agents: exploring nonlinear utility
spaces. Proceedings of the 20th International Joint
Conference on Artificial Intelligence, pages 1347–
1352.
Klein, M., Faratin, P., Sayama, H., and Bar-Yam, Y. (2003).
Protocols for negotiating complex contracts. IEEE In-
telligent Systems, 18:32–38.
Lai, G., Sycara, K., and Li, C. (2008). A decentralized
model for automated multi-attribute negotiations with
incomplete information and general utility functions.
Multiagent and Grid Systems, 4:45–65.
Li, M., Vo, Q. B., and Kowalczyk, R. (2011). Majority-
rule-based preference aggregation on multi-attribute
domains with cp-nets. In Proceedings of Autonomous
Agents and Multi-Agent Systems.
Nash, J. (1950). The bragaining problem. Econometrica,
18:155–162.
Sycara, K. (1991). Problem restructuring in negotiation.
Management Science, 37:1248–1268.
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