Traditional time series forecasting models mainly assume a clear and definite functional relationship between historical values and current/future values of a dataset. In this paper, we extended current model by generating multi-attribute forecasting rules based on consideration of combining multiple related variables. In this model, neutrosophic soft sets (NSSs) are employed to represent historical statues of several closely related attributes in stock market such as volumes, stock market index and daily amplitudes
AbstractForecasting the export and import volume in international trade is the prerequisite of a gov...
Many of decision-making and policy planning processes involve a time-series prediction problem and s...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
Traditional time series forecasting models mainly assume a clear and definite functional relationshi...
Making predictions according to historical values has long been regarded as common practice by many ...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
In this paper, we point out a major issue of stock market regarding trending scenario of trades wher...
AbstractIn recent years, there have been many time series methods proposed for forecasting enrollmen...
Most existing high-order prediction models abstract logical rules that are based on historical discr...
Stock market prediction is an important area of financial forecasting, which attracts great interest...
To forecast a complex and non-linear system, such as a stock market, advanced artificial intelligenc...
Most existing fuzzy forecasting models partition historical training time series into fuzzy time ser...
After reviewing the vast body of literature on using FTS in stock market forecasting, certain defici...
An increasing number of scholars have tried to incorporate external factors affecting the disturbanc...
After reviewing the vast body of literature on using FTS in stock market forecasting, certain defici...
AbstractForecasting the export and import volume in international trade is the prerequisite of a gov...
Many of decision-making and policy planning processes involve a time-series prediction problem and s...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
Traditional time series forecasting models mainly assume a clear and definite functional relationshi...
Making predictions according to historical values has long been regarded as common practice by many ...
The daily fluctuation trends of a stock market are illustrated by three statuses: up, equal, and dow...
In this paper, we point out a major issue of stock market regarding trending scenario of trades wher...
AbstractIn recent years, there have been many time series methods proposed for forecasting enrollmen...
Most existing high-order prediction models abstract logical rules that are based on historical discr...
Stock market prediction is an important area of financial forecasting, which attracts great interest...
To forecast a complex and non-linear system, such as a stock market, advanced artificial intelligenc...
Most existing fuzzy forecasting models partition historical training time series into fuzzy time ser...
After reviewing the vast body of literature on using FTS in stock market forecasting, certain defici...
An increasing number of scholars have tried to incorporate external factors affecting the disturbanc...
After reviewing the vast body of literature on using FTS in stock market forecasting, certain defici...
AbstractForecasting the export and import volume in international trade is the prerequisite of a gov...
Many of decision-making and policy planning processes involve a time-series prediction problem and s...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...