The paper develops a market-quality measurement framework for institutional liquidity in prediction markets and uses synthetic simulations to show that liquidity improvements do not benefit all traders equally, with larger welfare losses for slower traders during information shocks.
Toward Black Scholes for Prediction Markets: A Unified Kernel and Market Maker's Handbook
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Prediction markets, such as Polymarket, aggregate dispersed information into tradable probabilities, but they still lack a unifying stochastic kernel comparable to the one options gained from Black-Scholes. As these markets scale with institutional participation, exchange integrations, and higher volumes around elections and macro prints, market makers face belief volatility, jump, and cross-event risks without standardized tools for quoting or hedging. We propose such a foundation: a logit jump-diffusion with risk-neutral drift that treats the traded probability p_t as a Q-martingale and exposes belief volatility, jump intensity, and dependence as quotable risk factors. On top, we build a calibration pipeline that filters microstructure noise, separates diffusion from jumps using expectation-maximization, enforces the risk-neutral drift, and yields a stable belief-volatility surface. We then define a coherent derivative layer (variance, correlation, corridor, and first-passage instruments) analogous to volatility and correlation products in option markets. In controlled experiments on synthetic risk-neutral paths and real event data, the model reduces short-horizon belief-variance forecast error relative to diffusion-only and probability-space baselines, supporting both causal calibration and economic interpretability. Conceptually, the logit jump-diffusion kernel supplies an implied-volatility analogue for prediction markets: a tractable, tradable language for quoting, hedging, and transferring belief risk across venues such as Polymarket.
fields
cs.CE 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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What Happens When Institutional Liquidity Enters Prediction Markets: Identification, Measurement, and a Synthetic Proof of Concept
The paper develops a market-quality measurement framework for institutional liquidity in prediction markets and uses synthetic simulations to show that liquidity improvements do not benefit all traders equally, with larger welfare losses for slower traders during information shocks.