受控动态公平划分

E. Friedman, Alexandros Psomas, Shai Vardi
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引用次数: 35

摘要

在单资源动态公平分配框架中,存在一个同质资源,该资源在随时间动态到达和离开的代理之间共享。当存在n个代理时,只有一个真正“公平”的分配:每个代理接收1/n的资源。在动态世界中实现这种静态解决方案是出了名的不切实际;对现有分配的干扰太多了:为了让一个新代理人得到她应得的份额,所有其他代理人必须放弃一小部分。一种自然的补救方法就是在新代理到来时限制允许的中断次数。[16]考虑了这种设置,并引入了一个自然基准—公平比率—最小份额与理想份额的比率(当系统中有k个代理时为1/k)。他们描述了一种算法,当每个到达的代理允许d≥1次中断时,该算法获得了最优公平性比率。然而,在高到达率的系统中,即使每次到达都有一次中断,代价也太大了。我们考虑每次到达时允许的中断少于一次的情况。我们表明,即使每次到达的中断明显少于一次,我们也可以保持高水平的公平性。特别是,我们提出了一个实例最优算法(算法的输入是允许中断的向量),并表明该算法的公平比率随着c呈对数衰减,其中c是不允许任何中断的最长连续时间步数。然后,我们考虑多个异构资源的动态公平分配。在这个模型中,代理人以固定比例要求资源,这在经济学中被称为莱昂惕夫偏好。我们证明了一般问题是np困难的,即使资源需求是二进制的,并且事先已知。本文研究了以优势资源公平(DRF)为公平准则,需求向量为二元的情况。我们为这种设置设计了一个通用算法,使用简化到单一资源的情况。为了证明一个不可能的结果,我们用一个整数规划来证明这个问题,并分析了一个构造“残差”线性规划对偶解的算法;这种方法可能具有独立的利益。
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Controlled Dynamic Fair Division
In the single-resource dynamic fair division framework there is a homogeneous resource that is shared between agents dynamically arriving and departing over time. When n agents are present, there is only one truly ``fair'' allocation: each agent receives 1/n of the resource. Implementing this static solution in the dynamic world is notoriously impractical; there are too many disruptions to existing allocations: for a new agent to get her fair share, all other agents must give up a small piece. A natural remedy is simply to restrict the number of allowed disruptions when a new agent arrives. [16] considered this setting, and introduced a natural benchmark - the fairness ratio - the ratio of the minimal share to the ideal share (1/k when there are k agents in the system). They described an algorithm that obtains the optimal fairness ratio when d ≥ 1 disruptions are allowed per arriving agent. However, in systems with high arrival rates even one disruption per arrival can be too costly. We consider the scenario when fewer than one disruption per arrival is allowed. We show that we can maintain high levels of fairness even with significantly fewer than one disruption per arrival. In particular, we present an instance-optimal algorithm (the input to the algorithm is a vector of allowed disruptions) and show that the fairness ratio of this algorithm decays logarithmically with c, where c is the longest number of consecutive time steps in which we are not allowed any disruptions. We then consider dynamic fair division with multiple, heterogeneous resources. In this model, agents demand the resources in fixed proportions, known in economics as Leontief preferences. We show that the general problem is NP-hard, even if the resource demands are binary and known in advance. We study the case where the fairness criterion is Dominant Resource Fairness (DRF), and the demand vectors are binary. We design a generic algorithm for this setting using a reduction to the single-resource case. To prove an impossibility result, we take an integer program for the problem and analyze an algorithm for constructing dual solutions to a ``residual'' linear program; this approach may be of independent interest.
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