LGGTMay 5, 2025

Smooth Quadratic Prediction Markets

arXiv:2505.02959v2h-index: 1Has Code
Originality Incremental advance
AI Analysis

This work addresses the problem of improving prediction market mechanisms for researchers and practitioners, offering incremental enhancements over existing duality-based methods.

The paper tackles the design of prediction markets by proposing a Smooth Quadratic Prediction Market that incentivizes agents to implement steepest gradient descent, achieving better worst-case monetary loss for AD securities while preserving key guarantees like no arbitrage and incentive compatibility.

When agents trade in a Duality-based Cost Function prediction market, they collectively implement the learning algorithm Follow-The-Regularized-Leader. We ask whether other learning algorithms could be used to inspire the design of prediction markets. By decomposing and modifying the Duality-based Cost Function Market Maker's (DCFMM) pricing mechanism, we propose a new prediction market, called the Smooth Quadratic Prediction Market, the incentivizes agents to collectively implement general steepest gradient descent. Relative to the DCFMM, the Smooth Quadratic Prediction Market has a better worst-case monetary loss for AD securities while preserving axiom guarantees such as the existence of instantaneous price, information incorporation, expressiveness, no arbitrage, and a form of incentive compatibility. To motivate the application of the Smooth Quadratic Prediction Market, we independently examine agents' trading behavior under two realistic constraints: bounded budgets and buy-only securities. Finally, we provide an introductory analysis of an approach to facilitate adaptive liquidity using the Smooth Quadratic Prediction Market. Our results suggest future designs where the price update rule is separate from the fee structure, yet guarantees are preserved.

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