We study the stochastic assignment game and extend it to model multimodal mobility markets with a regulator or a Mobility-as-a-Service (MaaS) platform. We start by presenting general forms of one-to-one and many-to-many stochastic assignment games. Optimality conditions are discussed. The core of stochastic assignment games is defined, with expected payoffs of sellers and buyers in stochastic assignment games as payoffs from a hypothetical "ideal matching" that represent sellers' and buyers' expectations under imperfect information. To apply stochastic assignment games to the urban mobility markets, we extend the general stochastic many-to-many assignment game into a stochastic Stackelberg game to model MaaS systems, where the platform is the leader, and users and operators are the followers. The platform sets fares to maximize revenue. Users and operator react to the fare settings to form a stochastic many-to-many assignment game considering both fixed-route services and Mobility-on-Demand (MOD). The Stackelberg game is formulated as a bilevel problem. The lower level is the stochastic many-to-many assignment game between users and operators, shown to yield a coalitional logit model. The upper-level problem is a fare adjustment problem maximizing revenue. An iterative balancing algorithm is proposed to solve the lower-level problem exactly. The bilevel problem is solved through an iterative fare adjusting heuristic, whose solution is shown to be equivalent to the bilevel problem with an additional condition when it converges. Two case studies are conducted. The model can be applied to design MaaS fares maximizing income of the platform while anticipating the selfish behavior and heterogeneity of users and operators. Public agencies can also use the model to manage multimodal transportation systems.
翻译:本文研究了随机指派博弈并将其扩展为建模多模式出行市场的工具,该市场可由监管机构或出行即服务(MaaS)平台管理。我们首先提出了一对一与多对多随机指派博弈的一般形式,并讨论了其最优性条件。定义了随机指派博弈的核心,其中卖方与买方的期望收益被视为一种假设的“理想匹配”下的收益,该匹配反映了不完全信息下交易双方的预期。为将随机指派博弈应用于城市出行市场,我们将一般的随机多对多指派博弈扩展为随机斯塔克尔伯格博弈以建模MaaS系统,其中平台作为领导者,用户与运营商作为跟随者。平台通过定价实现收益最大化。用户与运营商根据定价策略形成考虑固定线路服务与按需出行(MOD)的随机多对多指派博弈。该斯塔克尔伯格博弈被表述为一个双层规划问题:下层是用户与运营商间的随机多对多指派博弈,可推导为联盟Logit模型;上层是平台收益最大化的票价调整问题。针对下层问题,我们提出了一种精确求解的迭代平衡算法。整个双层问题通过迭代票价调整启发式算法求解,该算法在收敛时等价于满足附加条件的原双层问题解。本文通过两个案例验证模型有效性。该模型可用于设计MaaS定价策略,在预测用户与运营商自私行为及异质性的同时实现平台收益最大化。公共机构亦可运用此模型管理多模式交通系统。