Kalman filter for computational market dynamics


Autoria(s): Ngolobe, Simon Peter Jr
Data(s)

19/05/2015

19/05/2015

2015

Resumo

Kalman filter is a recursive mathematical power tool that plays an increasingly vital role in innumerable fields of study. The filter has been put to service in a multitude of studies involving both time series modelling and financial time series modelling. Modelling time series data in Computational Market Dynamics (CMD) can be accomplished using the Jablonska-Capasso-Morale (JCM) model. Maximum likelihood approach has always been utilised to estimate the parameters of the JCM model. The purpose of this study is to discover if the Kalman filter can be effectively utilized in CMD. Ensemble Kalman filter (EnKF), with 50 ensemble members, applied to US sugar prices spanning the period of January, 1960 to February, 2012 was employed for this work. The real data and Kalman filter trajectories showed no significant discrepancies, hence indicating satisfactory performance of the technique. Since only US sugar prices were utilized, it would be interesting to discover the nature of results if other data sets are employed.

Identificador

http://www.doria.fi/handle/10024/104637

URN:NBN:fi-fe201505198533

Idioma(s)

en_US

Palavras-Chave #Stochastic modelling #Kalman filter #Ensemble modelling #Animal spirits #Market momentum #Markov chain Monte Marlo Methods
Tipo

Master's thesis

Diplomityö