21 research outputs found

    Uncertain demand, consumer loss aversion, and flat-rate tariffs

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    We consider a model of firm pricing and consumer choice, where consumers are loss averse and uncertain about their future demand. Possibly, consumers in our model prefer a flat rate to a measured tariff, even though this choice does not minimize their expected billing amount—a behavior in line with ample empirical evidence. We solve for the profit-maximizing two-part tariff, which is a flat rate if (a) marginal costs are not too high, (b) loss aversion is intense, and (c) there are strong variations in demand. Moreover, we analyze the optimal nonlinear tariff. This tariff has a large flat part when a flat rate is optimal among the class of two-part tariffs.Consumer loss aversion, flat-rate tariffs, nonlinear pricing, uncertain demand

    Essays on Dynamic Mechanism Design

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    We consider the allocation of one or several units of a good in a dynamic environment. The time horizon is finite and in each period, a random number of potential buyers arrives. In Chapter 1, we study revenue maximization in an environment where buyers are privately informed about their valuations and their deadlines. Depending on the type distribution, the incentive compatibility constraint for the deadline may or may not be binding in the optimal mechanism. We identify a static and a dynamic pricing effect that drive incentive compatibility and violations thereof. Both effects are related to distinct properties of the type distribution and sufficient conditions are given under which each effect leads to a binding or slack incentive constraint for the deadline. An optimal mechanism for the binding case is derived for the special case of one object, two periods and two buyers. It can be implemented by a fixed price in period one and an asymmetric auction in period two. In order to prevent buyer one from buying in the first period when his deadline is two, the seller sets a reserve price that is lower than in the classic (Myerson, 1981) optimal auction and gives him a (non-linear) bonus. The bonus leads to robust bunching at the top of the type-space. Chapter 2 contains a characterization of asymmetric reduced form auctions. In chapter 3, we consider a more general dynamic environment in which buyers' valuations may depend on the time of allocation in an arbitrary way. We show that the static Vickrey auction can be generalized to the dynamic framework. This yields a simple payment rule for the implementation of the efficient allocation rule of a single object. To define the dynamic Vickrey auction, we show that the multi-dimensional type-space can be reduced to essentially one dimension. This allows to define the winner's payment as the lowest valuation in the reduced type-space, that suffices to win. Finally we define an ascending clock-auction with an equilibrium-outcome that coincides with the outcome of the dynamic Vickrey auction

    Auction Design with Data-Driven Misspecifications

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    We consider auction environments in which at the time of the auction bidders observe signals about their ex-post value. We introduce a model of novice bidders who do not know know the joint distribution of signals and instead build a statistical model relating others' bids to their own ex post value from the data sets accessible from past similar auctions. Crucially, we assume that only ex post values and bids are accessible while signals observed by bidders in past auctions remain private. We consider steady-states in such environments, and importantly we allow for correlation in the signal distribution. We first observe that data-driven bidders may behave suboptimally in classical auctions such as the second-price or first-price auctions whenever there are correlations. Allowing for a mix of rational (or experienced) and data-driven (novice) bidders results in inefficiencies in such auctions, and we show the inefficiency extends to all auction-like mechanisms in which bidders are restricted to submit one-dimensional (real-valued) bids

    Generalized reduced-form auctions: a network-flow approach

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    We develop a network-flow approach for characterizing interim-allocation rules that can be implemented by ex post allocations. Our method can be used to characterize feasible interim allocations in general multi-unit auctions where agents face capacity constraints, both ceilings and floors. Applications include a variety of settings of practical interest, ranging from individual and group-specific capacity constraints, set-aside sale, partnership dissolution, and government license reallocation.Reduced-form auctions, network-flow approach, feasible circulation flow, paramodular capacity constraints

    Keeping the Listener Engaged: a Dynamic Model of Bayesian Persuasion

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    We consider a dynamic model of Bayesian persuasion in which information takes time and is costly for the sender to generate and for the receiver to process, and neither player can commit to their future actions. Persuasion may totally collapse in a Markov perfect equilibrium (MPE) of this game. However, for persuasion costs sufficiently small, a version of a folk theorem holds: outcomes that approximate Kamenica and Gentzkow (2011)'s sender-optimal persuasion as well as full revelation and everything in between are obtained in MPE, as the cost vanishes
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