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  5. Decision support for negotiation protocol selection: a machine learning approach based on articial neural networks
 
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Decision support for negotiation protocol selection: a machine learning approach based on articial neural networks

Publication date
2014
Document type
Working paper
Author
Lang, Fabian
Fink, Andreas 
Organisational unit
BWL, insb. Wirtschaftsinformatik 
DOI
10.24405/471
URI
https://openhsu.ub.hsu-hh.de/handle/10.24405/471
URN
nbn:de:gbv:705-opus-30412
Series or journal
Research paper / Institute of Computer Science 
Periodical volume
14
Periodical issue
02
Part of the university bibliography
✅
Files
 openHSU_471.pdf (667.18 KB)
  • Additional Information
DDC Class
330 Wirtschaft
Keyword
Entscheidungsunterstützung
Maschinelles Lernen
Prognose
Abstract
Decision making in operational planning is increasingly affected by conflicting interests of different stakeholders such as subcontractors, customers, or strategic partners. Addressing this, automated negotiation is a well-suited mechanism to mediate between stakeholders and search for jointly beneficial agreements. However, the outcome of a negotiation is strongly dependent on the applied negotiation protocol defining the rules of encounter. Although protocol design is well discussed in literature, the question on which protocol should be selected for a given scenario is little regarded so far. Since negotiation problems and protocols are very diverse, the protocol choice itself is a challenging task. In this study, we propose a decision support system for negotiation protocol selection (DSS-NPS) that is based on a machine learning approach – an artificial neural network (ANN). Besides presenting and discussing the system, we, furthermore, evaluate the design artifact in elaborate computational experiments that take place in an intercompany machine scheduling environment. Our findings indicate that the proposed decision support system is able to improve the outcome of negotiations by finding adequate protocols dynamically on the basis of the underlying negotiation problem characteristics.
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