A decision maker looks to take an active action (e.g., purchase some goods or make an investment). The payoff of this active action depends on his own private type as well as a random and unknown state of nature. To decide between this active action and another passive action, which always leads to a safe constant utility, the decision maker may purchase information from an information seller. The seller can access the realized state of nature, and this information is useful for the decision maker (i.e., the information buyer) to better estimate his payoff from the active action. We study the seller's problem of designing a revenue-optimal pricing scheme to sell her information to the buyer. Suppose the buyer's private type and the state of nature are drawn from two independent distributions, we fully characterize the optimal pricing mechanism for the seller in closed form. Specifically, under a natural linearity assumption of the buyer payoff function, we show that an optimal pricing mechanism is the threshold mechanism which charges each buyer type some upfront payment and then reveals whether the realized state is above some threshold or below it. The payment and the threshold are generally different for different buyer types, and are carefully tailored to accommodate the different amount of risks each buyer type can take. The proof of our results relies on novel techniques and concepts, such as upper/lower virtual values and their mixtures, which may be of independent interest.
翻译:决策人似乎希望采取积极的行动(例如购买某些货物或进行投资)。这种积极行动的回报取决于他自己的私人类型以及随机和未知的性质。在这种积极的行动和另一被动的行动之间作出决定,因为这种行动总是导致安全稳定的使用,决策者可以向信息卖方购买信息。卖方可以进入已实现的自然状态,而这种信息对于决策者(例如信息买方)来说是有益的,可以更好地估计他从积极的行动中得到的回报。我们研究了卖方设计收入最佳定价计划的问题,以便将其信息卖给买方。假设买方的私人类型和性质状态是从两种独立的分配中抽取的,我们完全确定卖方的最佳定价机制是封闭式的。具体地说,根据买方付款功能的自然线性假设,我们表明最佳定价机制是向每个买方收取先期付款的门槛机制,然后表明已实现的状态是否高于某些门槛或低于该标准。如果买方的私人类型和性质状况从两种独立分配中挑选出,那么买方的私人类型和最佳价格状况,我们就能完全确定卖方的最佳定价机制。根据买方的自然线性假设,可以审慎地根据买方的每类购买人的最新证据,对每一种风险进行不同的等级进行调整。