Many of the existing autoregressive moving average (ARMA) forecast models are based on one main factor. In this paper, we proposed a new two-factor first-order ARMA forecast model based on fuzzy fluctuation logical relationships of both a main factor and a secondary factor of a historical training time series. Firstly, we generated a fluctuation time series (FTS) for two factors by calculating the difference of each data point with its previous day, then finding the absolute means of the two FTSs. We then constructed a fuzzy fluctuation time series (FFTS) according to the defined linguistic sets. The next step was establishing fuzzy fluctuation logical relation groups (FFLRGs) for a two-factor first-order autoregressive (AR(1)) model and fo...
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...
Pada skripsi ini dipaparkan metode baru dengan menggunakan fuzzy time series untuk sebuah peramalan ...
An increasing number of scholars have tried to incorporate external factors affecting the disturbanc...
Autoregressive moving average (ARMA) models are important in many fields and applications, although ...
Linear time series methods are researched under 3 topics, namely, AR (autoregressive), MA (moving a...
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...
Forecasting the future values of a time series is a common research topic and is studied using proba...
Forecasting the future values of a time series is a common research topic and is studied using proba...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
There are many approaches to improve the forecasted accuracy of model based on fuzzy time series suc...
The point-valued time series (PTS) is simply about one value in each time or period of the data, but...
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...
Pada skripsi ini dipaparkan metode baru dengan menggunakan fuzzy time series untuk sebuah peramalan ...
An increasing number of scholars have tried to incorporate external factors affecting the disturbanc...
Autoregressive moving average (ARMA) models are important in many fields and applications, although ...
Linear time series methods are researched under 3 topics, namely, AR (autoregressive), MA (moving a...
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...
Forecasting the future values of a time series is a common research topic and is studied using proba...
Forecasting the future values of a time series is a common research topic and is studied using proba...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
There are many approaches to improve the forecasted accuracy of model based on fuzzy time series suc...
The point-valued time series (PTS) is simply about one value in each time or period of the data, but...
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...
Pada skripsi ini dipaparkan metode baru dengan menggunakan fuzzy time series untuk sebuah peramalan ...