Abstract

Market making (MM) is an important means of providing liquidity to the stock markets. Recent research suggests that reinforcement learning (RL) can improve MM significantly in terms of returns. In the latest work on RL-based MM, the reward is a function of equity returns, calculated based on its current price, and the inventory of MM agent. As a result, the agent’s return is maximised and liquidity is provided. If the price movement is known and this information is optimally utilised, there is potential that the MM agent’s return can be further improved. Important questions are, how to predict stock price movement, and how to utilise such prediction? In this paper, we introduce the concept of predictive market marking (PMM) and present our method for PMM, which comprises a RL-based MM agent and a deep neural network (DNN)-based price predictor. A key component of PMM is the consolidated price equation (CPE), which amalgamates an equity’s present and predicted market prices into a consolidated price, which is used to generate ask and bid quotes that reflect both current price and future movement. Our PMM method is evaluated against the state-of-the-art (RL-based MM) and a traditional MM method, using ten stocks and three exchange traded funds (ETFs). Out-of-sample backtesting showed that our PMM method outperformed the two benchmark methods.

Highlights

  • Market making (MM) is a well-known high frequency trading (HFT) strategy widely used in large stock exchanges around the world including NYSE and NASDAQ [1]

  • In this paper we study predictive market marking (PMM) by answering the following questions: 1) How to predict the future price of a stock?; 2) How to incorporate the predicted price in MM?; 3) Will such a PMM method generate higher profit and higher market liquidity?; and 4) How does this PMM method compare with the baseline methods namely RMMSpooner and AS model? To answer these questions, different PMM strategies, based on the type of deep neural network (DNN) architecture for price prediction and the value of consolidated price equation (CPE) weight (w ∈ [0.5, 1] ), are designed

  • The PMM strategies are the MM strategies developed through optimizing the CPE weight w (Eq 5) for each of the DNN model (MLP, LSTM and CNN)

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Summary

Introduction

Market making (MM) is a well-known high frequency trading (HFT) strategy widely used in large stock exchanges around the world including NYSE and NASDAQ [1]. The profit in MM comes from the difference between the quoted ask (sell) and the quoted bid (buy) price of a stock. A MM firm has an obligation to continuously place buying and selling limit orders to add liquidity to the market. The MM agent stands ready to continuously buy and sell stocks from other market participants during market operational hours in order to add liquidity to the market. We integrate the RMM-Spooner model with market price prediction feature.

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