We use high-frequency data from the Nasdaq exchange to build a measure of volume imbalance in the limit order (LO) book. We show that our measure is a good predictor of the sign of the next market order (MO), i.e., buy or sell, and also helps to predict price changes immediately after the arrival of an MO. Based on these empirical findings, we introduce and calibrate a Markov chain-modulated pure jump model of price, spread, LO and MO arrivals and volume imbalance. As an application of the model, we pose and solve a stochastic control problem for an agent who maximizes terminal wealth, subject to inventory penalties, by executing trades using LOs. We use in-sample-data (January to June 2014) to calibrate the model to 11 equities traded in t...
We propose a continuous-time stochastic model for the dynamics of a limit order book. The model stri...
This study mainly focuses on a series of topics within high frequency data of aprivate limit order b...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...
We use high-frequency data from the Nasdaq exchange to build a measure of volume imbalance in the li...
This dissertation demonstrates that there is high revenue potential in using limit order book imbala...
Institutional investors, especially high frequency traders, employ the order information contained i...
International audienceA limit order book provides information on available limit order prices and th...
Volume imbalance in a limit order book is often considered as a reliable indicator for predicting fu...
We study algorithmic trading strategies in order driven markets. We make three contributions to the ...
In financial markets, the order flow, defined as the process assuming value one for buy market order...
Purpose – Algorithmic trading attempts to reduce trading costs by se...
In this paper we develop a model of an order-driven market where traders set bids and asks and post ...
We study the multi-level order-flow imbalance (MLOFI), which is a vector quantity that measures the ...
The Limit Order Book is a widely used tool of exchanges to allow traders to buy or sell stock easily...
We show how a market maker employs information about the momentum in the price of the asset (i.e. al...
We propose a continuous-time stochastic model for the dynamics of a limit order book. The model stri...
This study mainly focuses on a series of topics within high frequency data of aprivate limit order b...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...
We use high-frequency data from the Nasdaq exchange to build a measure of volume imbalance in the li...
This dissertation demonstrates that there is high revenue potential in using limit order book imbala...
Institutional investors, especially high frequency traders, employ the order information contained i...
International audienceA limit order book provides information on available limit order prices and th...
Volume imbalance in a limit order book is often considered as a reliable indicator for predicting fu...
We study algorithmic trading strategies in order driven markets. We make three contributions to the ...
In financial markets, the order flow, defined as the process assuming value one for buy market order...
Purpose – Algorithmic trading attempts to reduce trading costs by se...
In this paper we develop a model of an order-driven market where traders set bids and asks and post ...
We study the multi-level order-flow imbalance (MLOFI), which is a vector quantity that measures the ...
The Limit Order Book is a widely used tool of exchanges to allow traders to buy or sell stock easily...
We show how a market maker employs information about the momentum in the price of the asset (i.e. al...
We propose a continuous-time stochastic model for the dynamics of a limit order book. The model stri...
This study mainly focuses on a series of topics within high frequency data of aprivate limit order b...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...