2015
DOI: 10.1002/int.21797
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Reward and Penalty Functions in Automated Negotiation

Abstract: Automated negotiation is very important for organizing decentralized systems such as e-business, p2p systems, cloud computing, and so on. During the course of a negotiation, reward and penalty can be used to increase the chance of reaching agreements between negotiating agents, but have not been applied into automated negotiation systems well, especially integrating both in a single negotiation system. Thus, in this work we make an effort to reveal how the reward increases the acceptability of an offer and how… Show more

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Cited by 3 publications
(5 citation statements)
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“…For example, if a payoff actually is equal to money, then the number of possible payoffs are bounded and the difference between any two numbers should be not less than 0.01 unit. Then for an interval value such as [3,10], it contains 700 numbers, i.e., [3,10] = {3, 3.01, 3.02, … , 9.98, 9.99, 10}. Therefore, we just need to confirm the order of magnitude for the payoff function, then the interval-valued payoff is also discrete.…”
Section: A4mentioning
confidence: 99%
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“…For example, if a payoff actually is equal to money, then the number of possible payoffs are bounded and the difference between any two numbers should be not less than 0.01 unit. Then for an interval value such as [3,10], it contains 700 numbers, i.e., [3,10] = {3, 3.01, 3.02, … , 9.98, 9.99, 10}. Therefore, we just need to confirm the order of magnitude for the payoff function, then the interval-valued payoff is also discrete.…”
Section: A4mentioning
confidence: 99%
“…Generally speaking, decision making involved multiple self‐interested agents is more complicated than that of only one agent. This is because when multiple agents make decisions, they have to consider how other agents choose their strategies . The most fundamental solution concept in multi‐agents decision making (i.e., game theory) is Nash equilibrium, which is widely used for predicting the outcome of a strategic interaction in different research areas .…”
Section: Introductionmentioning
confidence: 99%
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“…The concept of uninorm is introduced by Yager and Rybalov, and it is widely applied to many domains such as automated negotiation, fuzzy logic, market basket analysis, sequential decision‐making under uncertainty, fuzzy neural networks, and so on.…”
mentioning
confidence: 99%