Trading Volume Maximization with Online Learning
Tommaso Cesari, Roberto Colomboni

TL;DR
This paper studies how a broker can maximize trading volume in an online setting by designing algorithms that learn traders' valuations over time, achieving near-optimal regret under certain feedback and regularity assumptions.
Contribution
It introduces algorithms for trading volume maximization with full and limited feedback, providing regret bounds and analyzing the impact of regularity assumptions on learning.
Findings
Logarithmic regret with full feedback under continuous valuation distribution.
Poly-logarithmic regret with 2-bit feedback under Lipschitz condition.
Regret degrades to rac{rac{1}{2}}{T} when regularity assumptions are dropped.
Abstract
We explore brokerage between traders in an online learning framework. At any round , two traders meet to exchange an asset, provided the exchange is mutually beneficial. The broker proposes a trading price, and each trader tries to sell their asset or buy the asset from the other party, depending on whether the price is higher or lower than their private valuations. A trade happens if one trader is willing to sell and the other is willing to buy at the proposed price. Previous work provided guidance to a broker aiming at enhancing traders' total earnings by maximizing the gain from trade, defined as the sum of the traders' net utilities after each interaction. In contrast, we investigate how the broker should behave to maximize the trading volume, i.e., the total number of trades. We model the traders' valuations as an i.i.d. process with an unknown distribution. If the traders'…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Auction Theory and Applications
