State detection in a financial portfolio: a self-organizing maps approach for financial time series


Autoria(s): Matos, Diogo Manuel Pires de
Contribuinte(s)

Marques, Nuno Cavalheiro

Data(s)

21/01/2015

21/01/2015

01/09/2014

01/01/2015

Resumo

This study analyses financial data using the result characterization of a self-organized neural network model. The goal was prototyping a tool that may help an economist or a market analyst to analyse stock market series. To reach this goal, the tool shows economic dependencies and statistics measures over stock market series. The neural network SOM (self-organizing maps) model was used to ex-tract behavioural patterns of the data analysed. Based on this model, it was de-veloped an application to analyse financial data. This application uses a portfo-lio of correlated markets or inverse-correlated markets as input. After the anal-ysis with SOM, the result is represented by micro clusters that are organized by its behaviour tendency. During the study appeared the need of a better analysis for SOM algo-rithm results. This problem was solved with a cluster solution technique, which groups the micro clusters from SOM U-Matrix analyses. The study showed that the correlation and inverse-correlation markets projects multiple clusters of data. These clusters represent multiple trend states that may be useful for technical professionals.

Identificador

http://hdl.handle.net/10362/14157

Idioma(s)

eng

Direitos

openAccess

Palavras-Chave #Financial markets #SOM #Correlated markets #Clustering over U-Matrix
Tipo

masterThesis