Motivated by governance models adopted in blockchain applications, we study the problem of selecting appropriate system updates in a decentralised way. Contrary to most existing voting approaches, we use the input of a set of motivated experts of varying levels of expertise. In particular, we develop an approval voting inspired selection mechanism through which the experts approve or disapprove the different updates according to their perception of the quality of each alternative. Given their opinions, and weighted by their expertise level, a single update is then implemented and evaluated, and the experts receive rewards based on their choices. We show that this mechanism always has approximate pure Nash equilibria and that these achieve a constant factor approximation with respect to the quality benchmark of the optimal alternative. Finally, we study the repeated version of the problem, where the weights of the experts are adjusted after each update, according to their performance. Under mild assumptions about the weights, the extension of our mechanism still has approximate pure Nash equilibria in this setting.
翻译:我们研究的是以分散方式选择适当系统更新的问题。与大多数现有的投票方法相反,我们使用一组具有不同水平专长的有积极性的专家的投入。特别是,我们开发了一种批准投票激励选择机制,专家通过这一机制根据对每种选择的质量的看法批准或不同意不同的更新。根据他们的意见,并按他们的专门知识水平加以权衡,随后实施和评价一次更新,专家根据他们的选择得到奖励。我们表明,这一机制总是接近纯净的纳什平衡,并且这些选择在最佳选择的质量基准方面实现了一个不变的系数近似。最后,我们研究这一问题的反复版本,每次更新后,专家的权重根据他们的业绩进行调整。根据对权重的轻的假设,我们机制的扩展在这种环境下仍然有近乎纯净的纳什平衡。