ENROLLMENT FORECASTING BASED ON LINGUISTIC TIME SERIES

N. D. Hieu, N. C. Ho, Vũ Như Lân
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引用次数: 9

Abstract

Dealing with the time series forecasting problem attracts much attention from the fuzzy community. Many models and methods have been proposed in the literature since the publication of the study by Song and Chissom in 1993, in which they proposed fuzzy time series together with its fuzzy forecasting model for time series data and the fuzzy formalism to handle their uncertainty. Unfortunately, the proposed method to calculate this fuzzy model was very complex. Then, in 1996, Chen proposed an efficient method to reduce the computational complexity of the mentioned formalism. Hwang et al. in 1998 proposed a new fuzzy time series forecasting model, which deals with the variations of historical data instead of these historical data themselves. Though fuzzy sets are concepts inspired by fuzzy linguistic information, there is no formal bridge to connect the fuzzy sets and the inherent quantitative semantics of linguistic words. This study proposes the so-called linguistic time series, in which words with their own semantics are used instead of fuzzy sets. By this, forecasting linguistic logical relationships can be established based on the time series variations and this is clearly useful for human users. The effect of the proposed model is justified by applying the proposed model to forecast student enrollment historical data.
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基于语言时间序列的招生预测
时间序列预测问题的处理受到模糊界的广泛关注。自1993年Song和Chissom的研究发表以来,文献中提出了许多模型和方法,他们提出了模糊时间序列及其对时间序列数据的模糊预测模型和模糊形式主义来处理其不确定性。遗憾的是,所提出的计算该模糊模型的方法非常复杂。然后,在1996年,Chen提出了一种有效的方法来降低上述形式主义的计算复杂度。Hwang等人在1998年提出了一种新的模糊时间序列预测模型,该模型处理的是历史数据的变化,而不是这些历史数据本身。虽然模糊集是由模糊语言信息启发而来的概念,但模糊集与语言词汇固有的数量语义之间并没有形式化的桥梁连接。本研究提出了所谓的语言时间序列,其中使用具有自己语义的词来代替模糊集。通过这种方法,可以根据时间序列变化建立预测语言逻辑关系,这显然对人类用户很有用。通过对学生入学历史数据的预测,验证了模型的有效性。
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