High frequency exchange rate prediction using dynamic bayesian networks over the limit order book information

Abstract. This work presents a special case of a Dynamic Bayesian Networks (DBN) to capture the USD/COP market sentiment dynamics choosing from uptrend or downtrend latent regimes based on observed feature vector realizations calcu- lated from transaction prices and wavelet-transformed order book vo...

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Autores:
Sandoval Archila, Javier Hernando
Tipo de recurso:
Doctoral thesis
Fecha de publicación:
2016
Institución:
Universidad Nacional de Colombia
Repositorio:
Universidad Nacional de Colombia
Idioma:
spa
OAI Identifier:
oai:repositorio.unal.edu.co:unal/58647
Acceso en línea:
https://repositorio.unal.edu.co/handle/unal/58647
http://bdigital.unal.edu.co/55461/
Palabra clave:
6 Tecnología (ciencias aplicadas) / Technology
62 Ingeniería y operaciones afines / Engineering
Machine Learning
Dynamic Bayesian Networks
Price Prediction
Order Book Information
Hierarchical Hidden Markov Model
Wavelet Transform
Rights
openAccess
License
Atribución-NoComercial 4.0 Internacional
Description
Summary:Abstract. This work presents a special case of a Dynamic Bayesian Networks (DBN) to capture the USD/COP market sentiment dynamics choosing from uptrend or downtrend latent regimes based on observed feature vector realizations calcu- lated from transaction prices and wavelet-transformed order book volume dy- namics. The DBN learned a natural switching buy/uptrend, sell/downtrend trading strategy using a training-validation framework over one month of market data. The model was tested in the following two months, and its performance was reported and compared to results obtained from randomly classified market states and a feed-forward Neural Network. It is separately assessed the contribution to the model’s performance of the order book in- formation and the wavelet transformation. This work also constructs key trading strategy estimators based on the Ran- dom Entry Protocol over the USD/COP data. This technique eliminates unwanted dependencies on returns and order flow while keeps the natural autocorrelation structure of the Limit Order Book (LOB). It is still con- cluded that the DBN-based model results are competitive with a positive, statistically significant P/L and a well-understood risk profile. Buy-and-Hold results calculated over the testing period are provided for comparison reasons. A general characterization of the USD/COP Limit Order Books and theory behind the Dynamic Bayesian Networks are included as part of the main document.