Farias van roy

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Dynamic Pricing with a Prior on Market Response Vivek F. Farias, Benjamin Van Roy Why Dynamic Pricing? Price as a tactical lever to influence demand. Traditionally to maximize revenue with changing inventory at hand More useful with demand learning What is the Paper about?

Transcript of Farias van roy

Dynamic Pricing with a Prior on Market ResponseVivek F. Farias, Benjamin Van Roy

• Why Dynamic Pricing?

• Price as a tactical lever to influence demand.

• Traditionally to maximize revenue with changing inventory at hand

• More useful with demand learning

• What is the Paper about?

Model

• Limited Inventory

• Uncertainty about demand with learning

• Infinite time horizon

• Customers: Poisson Arrival with i.i.d.reservation price

Known Poisson Arrival Rate λ

HJB Equation

• Consider continuous-time dynamic system

• Objective to minimize a function

• : Optimal cost to go at time t and state x.

• The necessary condition is

With boundary condition

Applying to our problem

Here,

• Plugging in HJB

• First order optimality condition for prices gives

• Assumption 1 and existence of solution

• Also for computing,

• Lemma 1. is decreasing in x (on N) and non-decreasing in . .

• Lemma 2. For all x in N, is an increasing, concave function of .

Unknown arrival rate, Prior• Prior on Arrival rate is a finite mixture of Gamma

distributions.

• Kth order mixture is parameterized by vectors and a vector of K weights that sum to unity.

• The density and expectation for such a prior is given by

• The posterior at time t is

,

Unknown Arrival Rate

• Let denote the set of states reachable from

• HJB equation for this gives

where ,

, and

Heuristic

• Why Heuristic?

• Certainty equivalent

• Greedy Pricing

• Decay Balancing

Certainty Equivalent

• Each point in time computes the expected arrival rate conditioned on observed sales data.

• Known arrival rate model is then used to compute price. This solves

• Arrival uncertainty plays no role

Greedy Pricing

• A policy is said to be greedy if

• The first order condition gives the greedy price by

• Approximations to could be or

Decay Balancing

• HJB equation gives

• First order optimality condition implies

• Optimal Policy characterization

• Holding , and fixed increases as decreases.

• For a fixed inventory level , the optimal price in presence of uncertainty is higher than case when arrival rate is known.

• Approximating by the delay balancing approach chooses a policy that satisfies

• Holding , and fixed increases as decreases.

• For a fixed inventory level , the optimal price in presence of uncertainty is higher than case when arrival rate is known.

Computational Study

• Performance relative to Clairvoyant Algorithm

Multiple Stores and Consumer Segments

• Model with N stores and M consumer segments.

• Consumer of class j arrive according to Poisson process

• distributed according to Gamma distribution a0,j and b0,j.

• Updating process

Heuristic

• Certainty equivalent

• Greedy Pricing

• Decay Balancing

Questions?