An increasing number of scholars have tried to incorporate external factors affecting the disturbance of a time series into their forecasting models. However, these studies only verify the linkage relationship of two or more time series by empirical tests without providing any theoretical explanation. This makes it difficult to choose a linkage time series without using many tests. In this paper, a novel two-factor fuzzy-fluctuation time series (FFTS) forecasting model is proposed based on the probabilistic linguistic preference relationship (PLPR) and similarity measure. It not only proposes the idea of combining external factors with internal potential trends but also explains the linkage mechanism of time series fluctuations from the per...
The fuzzy time series (FTS) is a forecasting model based on linguistic values. This forecasting meth...
Pada skripsi ini dipaparkan metode baru dengan menggunakan fuzzy time series untuk sebuah peramalan ...
There are many approaches to improve the forecasted accuracy of model based on fuzzy time series suc...
Many of the existing autoregressive moving average (ARMA) forecast models are based on one main fact...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
Most existing fuzzy forecasting models partition historical training time series into fuzzy time ser...
A fuzzy time series has been applied to the prediction of enrollment, temperature, stock indices, an...
Making predictions according to historical values has long been regarded as common practice by many ...
Most existing high-order prediction models abstract logical rules that are based on historical discr...
The point-valued time series (PTS) is simply about one value in each time or period of the data, but...
After reviewing the vast body of literature on using FTS in stock market forecasting, certain defici...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
AbstractIn recent years, there have been many time series methods proposed for forecasting enrollmen...
After reviewing the vast body of literature on using FTS in stock market forecasting, certain defici...
[[abstract]]Traditional time series methods fail to forecast the problems with linguistic historical...
The fuzzy time series (FTS) is a forecasting model based on linguistic values. This forecasting meth...
Pada skripsi ini dipaparkan metode baru dengan menggunakan fuzzy time series untuk sebuah peramalan ...
There are many approaches to improve the forecasted accuracy of model based on fuzzy time series suc...
Many of the existing autoregressive moving average (ARMA) forecast models are based on one main fact...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
Most existing fuzzy forecasting models partition historical training time series into fuzzy time ser...
A fuzzy time series has been applied to the prediction of enrollment, temperature, stock indices, an...
Making predictions according to historical values has long been regarded as common practice by many ...
Most existing high-order prediction models abstract logical rules that are based on historical discr...
The point-valued time series (PTS) is simply about one value in each time or period of the data, but...
After reviewing the vast body of literature on using FTS in stock market forecasting, certain defici...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
AbstractIn recent years, there have been many time series methods proposed for forecasting enrollmen...
After reviewing the vast body of literature on using FTS in stock market forecasting, certain defici...
[[abstract]]Traditional time series methods fail to forecast the problems with linguistic historical...
The fuzzy time series (FTS) is a forecasting model based on linguistic values. This forecasting meth...
Pada skripsi ini dipaparkan metode baru dengan menggunakan fuzzy time series untuk sebuah peramalan ...
There are many approaches to improve the forecasted accuracy of model based on fuzzy time series suc...