Team reasoning: Solving the puzzle of coordination

被引:0
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作者
Andrew M. Colman
Natalie Gold
机构
[1] University of Leicester,Department of Neuroscience, Psychology and Behaviour
[2] King’s College London,Department of Philosophy
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关键词
Common knowledge; Cooperation; Coordination; Game theory; Group identification; Social dilemma; Social value orientation; Team reasoning;
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摘要
In many everyday activities, individuals have a common interest in coordinating their actions. Orthodox game theory cannot explain such intuitively obvious forms of coordination as the selection of an outcome that is best for all in a common-interest game. Theories of team reasoning provide a convincing solution by proposing that people are sometimes motivated to maximize the collective payoff of a group and that they adopt a distinctive mode of reasoning from preferences to decisions. This also offers a compelling explanation of cooperation in social dilemmas. A review of team reasoning and related theories suggests how team reasoning could be incorporated into psychological theories of group identification and social value orientation theory to provide a deeper understanding of these phenomena.
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页码:1770 / 1783
页数:13
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