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Model Setup: MAB Pricing

Profits: The firm can determine the price from price set p{p1,p2,...pk}p \in \{p_1, p_2, ... p_k\} and face with demand D(p)D(p), thus the profit is π(p)=pD(p)\pi(p) = p D(p).

Price experimentation: Suppose by time tt, the firm has charged pkp_k a total of nktn_{kt} times. Let πk,1,πk,2,,πk,nkt\pi_{k,1},\pi_{k,2},\ldots,\pi_{k,n_{kt}} be realizations of profit per consumer from every time that price pkp_k has been charged.

  • We assume that these are drawn from an unknown probability distribution with a mean at the true profit π(pk)π(p_k).

Pricing problem:

pt=Ψ({pτ,πττ=1,,t1})\begin{aligned}p_t=\Psi(\{p_\tau,\pi_\tau|\tau=1,\ldots,t-1\})\end{aligned}

Test

Short Summary
Model setup
Modified Algorithms
Some Thoughts
Pricing with Federated Learning
Xuhang Fan, Duke University
Dynamic Online Pricing Using MAB Experiments
5 / 19
2023/01/01
current

No notes.