Optimal Market Making Under Partial Information With General Intensities

Applied Mathematical Finance (2020)

37 Pages Posted: 27 Feb 2020 Last revised: 26 Jun 2020

See all articles by Luciano Campi

Luciano Campi

London School of Economics & Political Science (LSE)

Diego Zabaljauregui

London School of Economics & Political Science (LSE)

Date Written: December 1, 2018

Abstract

Starting from the Avellaneda–Stoikov framework, we consider a market maker who wants to optimally set bid/ask quotes over a finite time horizon, to maximize her expected utility. The intensities of the orders she receives depend not only on the spreads she quotes, but also on unobservable factors modelled by a hidden Markov chain. We tackle this stochastic control problem under partial information with a model that unifies and generalizes many existing ones under full information, combining several risk metrics and constraints, and using general decreasing intensity functionals. We use stochastic filtering, control and piecewise-deterministic Markov processes theory, to reduce the dimensionality of the problem and characterize the reduced value function as the unique continuous viscosity solution of its dynamic programming equation. We then solve the analogous full information problem and compare the results numerically through a concrete example. We show that the optimal full information spreads are biased when the exact market regime is unknown, and the market maker needs to adjust for additional regime uncertainty in terms of P&L sensitivity and observed order flow volatility. This effect becomes higher, the longer the waiting time in between orders.

Keywords: Market Making, High-Frequency Trading, Algorithmic Trading, Stochastic Optimal Control, Hidden Markov Model, Stochastic Filtering, Viscosity Solutions, Piecewise-Deterministic Markov Processes

JEL Classification: C02, C61, C63, C68, D81, D83, D84

Suggested Citation

Campi, Luciano and Zabaljauregui, Diego, Optimal Market Making Under Partial Information With General Intensities (December 1, 2018). Applied Mathematical Finance (2020), Available at SSRN: https://ssrn.com/abstract=3530446 or http://dx.doi.org/10.2139/ssrn.3530446

Luciano Campi

London School of Economics & Political Science (LSE) ( email )

Houghton Street
London, WC2A 2AE
United Kingdom

Diego Zabaljauregui (Contact Author)

London School of Economics & Political Science (LSE) ( email )

London, WC2A 2AE
United Kingdom

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
149
Abstract Views
2,543
Rank
497,070
PlumX Metrics