Li Sheng-Tun, Cheng Yi-Chung
Institute of Information Management and the Department of Industrial and Information Management, National Cheng Kung University, Tainan 701, Taiwan.
IEEE Trans Syst Man Cybern B Cybern. 2010 Oct;40(5):1255-66. doi: 10.1109/TSMCB.2009.2036860. Epub 2009 Dec 18.
Recently, fuzzy time series have attracted more academic attention than traditional time series due to their capability of dealing with the uncertainty and vagueness inherent in the data collected. The formulation of fuzzy relations is one of the key issues affecting forecasting results. Most of the present works adopt IF-THEN rules for relationship representation, which leads to higher computational overhead and rule redundancy. Sullivan and Woodall proposed a Markov-based formulation and a forecasting model to reduce computational overhead; however, its applicability is limited to handling one-factor problems. In this paper, we propose a novel forecasting model based on the hidden Markov model by enhancing Sullivan and Woodall's work to allow handling of two-factor forecasting problems. Moreover, in order to make the nature of conjecture and randomness of forecasting more realistic, the Monte Carlo method is adopted to estimate the outcome. To test the effectiveness of the resulting stochastic model, we conduct two experiments and compare the results with those from other models. The first experiment consists of forecasting the daily average temperature and cloud density in Taipei, Taiwan, and the second experiment is based on the Taiwan Weighted Stock Index by forecasting the exchange rate of the New Taiwan dollar against the U.S. dollar. In addition to improving forecasting accuracy, the proposed model adheres to the central limit theorem, and thus, the result statistically approximates to the real mean of the target value being forecast.
近年来,模糊时间序列因其能够处理所收集数据中固有的不确定性和模糊性,比传统时间序列吸引了更多的学术关注。模糊关系的形成是影响预测结果的关键问题之一。目前的大多数工作采用“如果-那么”规则来表示关系,这导致了更高的计算开销和规则冗余。沙利文和伍德尔提出了一种基于马尔可夫的公式和一个预测模型来减少计算开销;然而,其适用性仅限于处理单因素问题。在本文中,我们通过改进沙利文和伍德尔的工作,提出了一种基于隐马尔可夫模型的新型预测模型,以允许处理双因素预测问题。此外,为了使预测的推测性和随机性本质更加现实,采用蒙特卡罗方法来估计结果。为了测试所得随机模型的有效性,我们进行了两个实验,并将结果与其他模型的结果进行比较。第一个实验包括预测台湾台北的日平均温度和云密度,第二个实验基于台湾加权股票指数,通过预测新台币对美元的汇率。除了提高预测准确性外,所提出的模型遵循中心极限定理,因此,结果在统计上近似于被预测目标值的实际均值。