模糊时间序列预测:Chen、Markov链和Cheng模型

Mona Mahmoud Samy Abo El Nasr
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引用次数: 0

摘要

本文对模糊时间序列分析的几种方法进行了研究和综述。尽管预测方法在过去几十年里有了先进的应用,但模糊时间序列是常见的,并且有很多人感兴趣,因为它们不需要对时间序列数据进行任何统计假设。以往的研究采用模糊时间序列模型来预测招生统计、股票价格、汇率等。本文的主要目的是比较研究一些不同的模糊时间序列预测方法,其中包括马尔可夫链、陈和程对哈伯汽车数据的预测。七个统计标准被用来调查模型的准确性。所有的计算都是使用R软件系统使用AnalyzeTS R包进行的。马尔可夫链模糊时间序列模型表现出最高的性能(在所有指标中);例如,在RMSE中,MAPE和u统计量分别为0.013、0.116和1.05。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy Time Series Forecasting: Chen, Markov Chain and Cheng Models
This paper studies and reviews several procedures for Fuzzy Time Series analysis. Even though forecasting methods have advanced applications in the last few decades, Fuzzy Time Series are common and have a lot of interest because they do not require any statistical assumptions on time series data. Previous research has employed Fuzzy Time Series models to forecast enrollment statistics, stock prices, exchange rates, etc. The major goal of This work is a comparative study of some different methods of forecasting the Fuzzy Time Series among which are the Markov Chain, Chen, and Cheng for Ghabbour Autocars data. Seven statistical criteria have been used for investigating the accuracy of the models. All the calculations were performed using the R software system using the AnalyzeTS R package. The Markov-chain fuzzy time series model showed the highest performance (in all metrics); for instance, in RMSE, MAPE, and U-statistics are 0.013, 0.116, and 1.05 respectively.
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