Rule extraction from technology IPOs in the US stock market


Autoria(s): Mitsdorffer, R.; Diederich, J.; Tan, C.
Contribuinte(s)

L. Wang

J. C. Rajapakse

K. Fukushima

S. Lee

X. Yao

Data(s)

01/01/2002

Resumo

Machine learning techniques for prediction and rule extraction from artificial neural network methods are used. The hypothesis that market sentiment and IPO specific attributes are equally responsible for first-day IPO returns in the US stock market is tested. Machine learning methods used are Bayesian classifications, support vector machines, decision tree techniques, rule learners and artificial neural networks. The outcomes of the research are predictions and rules associated With first-day returns of technology IPOs. The hypothesis that first-day returns of technology IPOs are equally determined by IPO specific and market sentiment is rejected. Instead lower yielding IPOs are determined by IPO specific and market sentiment attributes, while higher yielding IPOs are largely dependent on IPO specific attributes.

Identificador

http://espace.library.uq.edu.au/view/UQ:98240

Idioma(s)

eng

Publicador

Nanyang Technological University, Singapore

Palavras-Chave #E1 #280205 Text Processing #700103 Information processing services
Tipo

Conference Paper