Geometric Pricing: How Low Dimensionality Helps in Approximability
Parinya Chalermsook, Khaled Elbassioni, Danupon Nanongkai, He Sun

TL;DR
This paper explores how low-dimensional geometric structures can improve approximation algorithms for complex pricing problems, connecting geometric and economic theories to develop novel solutions.
Contribution
It introduces a new class of geometric pricing problems and demonstrates how low dimensionality enables better approximation algorithms.
Findings
Developed sublinear-approximation algorithms for key geometric pricing problems
Connected geometric pricing to well-known problems like highway and vertex pricing
Highlighted the potential of geometric approaches in algorithmic pricing research
Abstract
Consider the following toy problem. There are rectangles and points on the plane. Each rectangle is a consumer with budget , who is interested in purchasing the cheapest item (point) inside R, given that she has enough budget. Our job is to price the items to maximize the revenue. This problem can also be defined on higher dimensions. We call this problem the geometric pricing problem. In this paper, we study a new class of problems arising from a geometric aspect of the pricing problem. It intuitively captures typical real-world assumptions that have been widely studied in marketing research, healthcare economics, etc. It also helps classify other well-known pricing problems, such as the highway pricing problem and the graph vertex pricing problem on planar and bipartite graphs. Moreover, this problem turns out to have close connections to other natural geometric…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Auction Theory and Applications · Game Theory and Voting Systems
