Table 2: Final activation levels of the concepts in the FCM
negotiation model.
C T I R EV
Negot.1
1.0 0.93 -0.83 0.91
-0.85
Negot.2
1.0 0.93 -0.83 0.91
-0.85
Negot.3
-1.0 -1.0 0.84 -0.91
0.86
Analyzing the results of Table 2 we observe that the
model behaves as it should have. More specifically,
in the worst and best scenario cases the value of the
negotiation concept stabilizes at -0.85 and 0.86
which suggests that the final outcome will
eventually be negative and positive respectively. The
rest of the concepts behave also as expected. In the
worst case negotiation both cost and time are driven
to even more negative values than originally started,
while it is interesting to note that Interest becomes
negative, which indicates that senior management
stops participating in “lost” cases and devotes their
time to other more beneficiary projects.
Additionally, Relationship becomes more positive
signifying that trust and good communication may
not be hampered in cases where the negotiation is
ended without consensus due to infeasible
development that results from unsatisfactory time
and cost projections.
The exactly opposite picture is observed for the
best case where a mirroring to the above set of
values again justifies the correctness of the model in
capturing properly the dynamics behind such
promising negotiation scenery. Finally, we should
comment a bit on the results of the medium state,
where we can discern that the outcome of the
negotiation is closer to the negative value. This is
also quite natural as it is clear from the behaviour of
the model that the two leading factors are cost and
time and once this suggest a negative development
expectation then negotiations are doomed to fail.
6 CONCLUSIONS
Negotiations are generally subject to many types of
risks. As previously discussed, a risk element can
influence negatively or positively the software
development and should be identified during
negotiation preparation because of the necessity of
having a real view of the context in which the
negotiation decision will take place. This work aims
at addressing a strategy to facilitate risk
identification and quantification, inferring to the
suggested expected value and based on critical
negotiation elements or concepts.
The work also examines the importance of
evaluating the risk assessment method through the
use of Fuzzy Cognitive Maps. The model proposed
obtains the appropriate associations among the
negotiation elements through real negotiation
experiments and evaluates the result. Three
hypothetical scenarios were executed taking into
consideration the key concepts of: contract’s cost
development, development time, counterparts’
interests, counterparts’ relationship and negotiation’s
expected value. The results showed that the method
is promising as the model reacts with the way it was
expected to.
Finally, we might suggest that the method of risk
quantification using proportionally weights and
impacts to evaluate risks in cost, time, relationship
and negotiation’s interests is capable to facilitate the
identification of preponderant threats and
opportunities and leads to better negotiations.
Conclusively, for future work the innovative tool
proposed may be further examined to involve other
supplementary elements to the software, which may
also be included in the assessment model of Fuzzy
Cognitive Maps (FCM), and make inferences in
different negotiation areas to examine the methods
generalization to other backgrounds.
REFERENCES
Bartlett, 2004, Bartlett, J. "Project Risk Analysis and
Management Guide", Second Edition ed., UK: Apm
Publishing Limited, 2004.
Kosko, 1994, Kosko, B., “Fuzzy Thinking. The New
Science of Fuzzy Logic”, London: Harper Collins.
Papatheocharous, 2008, Papatheocharous, E., Rossides, G.
and Andreou, A. S. "Qualitative Software Cost
Estimation Using Fuzzy Cognitive Maps", AISEW -
Artificial Intelligence Techniques in Software
Engineering Workshop at 18th European Conference
on Artificial Intelligence, Patras, Greece, 2008.
PMBOK, 2004, PMBOK. “Project Management Body of
Knowledge”, 2004 Edition. Project Management
Institute, http://www.pmi.org, 2004.
Rodrigues, 2008, Rodrigues, S. A.; Vaz, M. A.; Souza, J.
M. “A Software to Manage Risks in Project’s
Negotiations”. In: WORLDCOMP'08 The 2008 World
Congress in Computer Science, Computer
Engineering, and Applied Computing, Las Vegas.
Tsadiras, 1998, Tsadiras, A.K. and Margaritis, K.G. “The
MYCIN Certainly Factor Handling Function as
Uninorm Operator and its Use as Threshold Function
in Artificial Neurons”, Fuzzy Set and Systems, Vol.
93, 263-274, 1998.
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