Pricing with Multi-servers

In this Big Data era, a "global optimal pricing strategy" is hard to find.

Lets say we wanna train a strategy for Amazon, we will find following problems:

  • Cannot access "whole data" since price experimentation data are stored in different servers
    e.g. Amazon has data centers in many places like SFO (west) and IAD (east)
  • Local servers find a biased pricing strategy based on partial data, and a central server can communicate with local servers to find a global optimal strategy but incurs communication loss

Research Question: how to optimize the decentralized learning process using the same trick in Misra paper?

  • utlizing power of multi-servers and find optimal prices
  • improve the communication efficiency
Short Summary
Model setup
Modified Algorithms
Some Thoughts
Pricing with Federated Learning
Xuhang Fan, Duke University
Dynamic Online Pricing Using MAB Experiments
16 / 19
2023/01/01