Forecasting Change Directions for Financial Time Series Using Hidden Markov Model

초록

Financial time series, i.e. stock prices, has the property of being noisy, volatile and non-stationary. It causes the uncertainty in the forecasting of the financial time series. To overcome this difficulty, we propose a new method that forecasts change direction (up ordown) of next day's closing price of financial time series using the continuous HMM. It classifies sliding windowed stock prices to two categories (up ordown) by their next day's price change directions, and then trains two HMMs for two categories. Experiments showed that our method forecasts the change directions of financial time series having dynamic characteristics effectively. © 2009 Springer Berlin Heidelberg.

제목
Forecasting Change Directions for Financial Time Series Using Hidden Markov Model
저자
JUHONG LEE
학회명
4th international Conference on Rough sets and Knowledge Technology
개최지
WaterMark Hotel & Spa in Gold Coast, Queensland, Australia
학회 개최일
2009-07-14 ~ 2009-07-16