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A Distance-based Fuzzy Time Series Model For Exchange Rates Forecasting

机译:基于距离的时间序列模糊时间预测模型

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摘要

Fuzzy time series model has been successfully employed in predicting stock prices and foreign exchange rates. In this paper, we propose a new fuzzy time series model termed as distance-based fuzzy time series (DBFTS) to predict the exchange rate. Unlike the existing fuzzy time series models which require exact match of the fuzzy logic relationships (FLRs), the distance-based fuzzy time series model uses the distance between two FLRs in selecting prediction rules. To predict the exchange rate, a two factors distance-based fuzzy time series model is constructed. The first factor of the model is the exchange rate itself and the second factor comprises many candidate variables affecting the fluctuation of exchange rates. Using the exchange rate data released by the Central Bank of Taiwan, we conducted several experiments on exchange rate forecasting. The experiment results showed that the distance-based fuzzy time series outperformed the random walk model and the artificial neural network model in terms of mean square error.
机译:模糊时间序列模型已成功地用于预测股票价格和汇率。在本文中,我们提出了一种新的模糊时间序列模型,称为基于距离的模糊时间序列(DBFTS),以预测汇率。与现有的模糊时间序列模型要求精确匹配模糊逻辑关系(FLR)不同,基于距离的模糊时间序列模型在选择预测规则时使用两个FLR之间的距离。为了预测汇率,建立了基于两因素距离的模糊时间序列模型。该模型的第一个因素是汇率本身,第二个因素包括许多影响汇率波动的候选变量。利用台湾中央银行发布的汇率数据,我们进行了几次汇率预测实验。实验结果表明,基于距离的模糊时间序列在均方误差方面优于随机游走模型和人工神经网络模型。

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