We consider the problem of forming collectives of agents for real-world applications aligned with Sustainable Development Goals (e.g., shared mobility, cooperative learning). We propose a general approach for the formation of collectives based on a novel combination of an attention model and an integer linear program (ILP). In more detail, we propose an attention encoder-decoder model that transforms a collective formation instance to a weighted set packing problem, which is then solved by an ILP. Results on two real-world domains (i.e., ridesharing and team formation for cooperative learning) show that our approach provides solutions that are comparable (in terms of quality) to the ones produced by state-of-the-art approaches specific to each domain. Moreover, our solution outperforms the most recent general approach for forming collectives based on Monte Carlo tree search.
翻译:我们考虑了为符合可持续发展目标的现实应用(例如,共同流动、合作学习)形成集体代理人集体的问题;我们建议了一种基于关注模式和整线性程序的新组合的形成集体代理人的一般办法;更详细地说,我们建议了一种将集体形成实例转化为加权组合包装问题的编码-编码器模型,然后由综合法律方案解决。 两个现实世界领域(即,共享交通工具和团队组建促进合作学习)的结果表明,我们的方法所提供的解决办法(质量)可与每个领域最先进的方法所产生的解决办法(质量)相比。此外,我们的解决方案超越了基于蒙特卡洛树搜索形成集体的最近一般办法。