We develop a large-scale deep learning model to predict price movements from limit order book (LOB) data of cash equities. The architecture utilizes convolutional filters to capture the spatial structure of the LOBs as well as long short-term memory modules to capture longer time dependencies. The proposed network outperforms all existing state-of-the-art algorithms on the benchmark LOB dataset [A. Ntakaris, M. Magris, J. Kanniainen, M. Gabbouj, and A. Iosifidis, “Benchmark dataset for mid-price prediction of limit order book data with machine learning methods,” J. Forecasting, vol. 37, no. 8, 852-866, 2018]. In a more realistic setting, we test our model by using one-year market quotes from the London Stock Exchange, and the model delivers...
Highly sophisticated artificial neural networks have achieved unprecedented performance across a var...
In this paper, we conduct a systematic large-scale analysis of order book-driven predictability in h...
This thesis proposes a convolutional long short-term memory neural network model for predicting limi...
The limit order book of a financial instrument represents its supply and demand at each point in tim...
The success of deep learning-based limit order book forecasting models is highly dependent on the qu...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...
The field of finance is an interesting field in which much research takes place. In particular, its ...
The Limit Order Book is a digital queuing system in which buy and sell orders are stored, with the a...
In this paper, we build a deep neural network for modeling spatial structure in limit order book and...
This survey starts with a general overview of the strategies for stock price change predictions base...
LOB tracks the outstanding limit order for a stock or other security. LOB data is often used as an ...
Price prediction has become a major task due to the explosive increase in the number of investors. T...
The main methods, which we believe could be of use to other researchers, are found in: _dataprocess...
Managing the prediction of metrics in high‐frequency financial markets is a challenging task. An eff...
Time-series forecasting has various applications in a wide range of domains, e.g., forecasting stock...
Highly sophisticated artificial neural networks have achieved unprecedented performance across a var...
In this paper, we conduct a systematic large-scale analysis of order book-driven predictability in h...
This thesis proposes a convolutional long short-term memory neural network model for predicting limi...
The limit order book of a financial instrument represents its supply and demand at each point in tim...
The success of deep learning-based limit order book forecasting models is highly dependent on the qu...
The increasing complexity of financial trading in recent years revealed the need for methods that ca...
The field of finance is an interesting field in which much research takes place. In particular, its ...
The Limit Order Book is a digital queuing system in which buy and sell orders are stored, with the a...
In this paper, we build a deep neural network for modeling spatial structure in limit order book and...
This survey starts with a general overview of the strategies for stock price change predictions base...
LOB tracks the outstanding limit order for a stock or other security. LOB data is often used as an ...
Price prediction has become a major task due to the explosive increase in the number of investors. T...
The main methods, which we believe could be of use to other researchers, are found in: _dataprocess...
Managing the prediction of metrics in high‐frequency financial markets is a challenging task. An eff...
Time-series forecasting has various applications in a wide range of domains, e.g., forecasting stock...
Highly sophisticated artificial neural networks have achieved unprecedented performance across a var...
In this paper, we conduct a systematic large-scale analysis of order book-driven predictability in h...
This thesis proposes a convolutional long short-term memory neural network model for predicting limi...