Author/Authors :
Jingwei Liu، نويسنده , , Tai-Liang Chenb، نويسنده , , Ching-Hsue Chenga، نويسنده , , Yao-Hsien Chena، نويسنده , , c، نويسنده ,
Abstract :
In recent years, there have been many time series methods proposed for forecasting
enrollments, weather, the economy, population growth, and stock price, etc. However,
traditional time series, such as ARIMA, expressed by mathematic equations are unable
to be easily understood for stock investors. Besides, fuzzy time series can produce fuzzy
rules based on linguistic value, which is more reasonable than mathematic equations
for investors. Furthermore, from the literature reviews, two shortcomings are found in
fuzzy time series methods: (1) they lack persuasiveness in determining the universe of
discourse and the linguistic length of intervals, and (2) only one attribute (closing price) is
usually considered in forecasting, not multiple attributes (such as closing price, open price,
high price, and low price). Therefore, this paper proposes a multiple attribute fuzzy time
series (FTS) method, which incorporates a clustering method and adaptive expectation
model, to overcome the shortcomings above. In verification, using actual trading data of
the Taiwan Stock Index (TAIEX) as experimental datasets, we evaluate the accuracy of the
proposed method and compare the performance with the (Chen, 1996 [7], Yu, 2005 [6], and
Cheng, Cheng, & Wang, 2008 [20]) methods. The proposed method is superior to the listing
methods based on average error percentage (MAER).
Keywords :
Fuzzy time series , Adaptive expectation model , Fuzzy clustering , Stock index futures forecasting