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Improvement of prediction for a larger number of steps in discrete stationary processes

Tomáš Cipra (1982)

Aplikace matematiky

Let { W t } = { ( X t ' ' , Y t ' ) ' } be vector ARMA ( m , n ) processes. Denote by X ^ t ( a ) the predictor of X t based on X t - a , X t - a - 1 , ... and by X ^ t ( a , b ) the predictor of X t based on X t - a , X t - a - 1 , ... , Y t - b , Y t - b - 1 , ... . The accuracy of the predictors is measured by Δ X ( a ) = E [ X t - X ^ t ( a ) ] [ X t - X ^ t ( a ) ] ' and Δ X ( a , b ) = E [ X t - X ^ t ( a , b ) ] [ X t - X ^ t ( a , b ) ] ' . A general sufficient condition for the equality Δ X ( a ) = Δ X ( a , a ) ] is given in the paper and it is shown that the equality Δ X ( 1 ) = Δ X ( 1 , 1 ) ] implies Δ X ( a ) = Δ X ( a , a ) ] for all natural numbers a .

Intelligent financial time series forecasting: A complex neuro-fuzzy approach with multi-swarm intelligence

Chunshien Li, Tai-Wei Chiang (2012)

International Journal of Applied Mathematics and Computer Science

Financial investors often face an urgent need to predict the future. Accurate forecasting may allow investors to be aware of changes in financial markets in the future, so that they can reduce the risk of investment. In this paper, we present an intelligent computing paradigm, called the Complex Neuro-Fuzzy System (CNFS), applied to the problem of financial time series forecasting. The CNFS is an adaptive system, which is designed using Complex Fuzzy Sets (CFSs) whose membership functions are complex-valued...

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