Most existing high-order prediction models abstract logical rules that are based on historical discrete states without considering historical inconsistency and fluctuation trends. In fact, these two characteristics are important for describing historical fluctuations. This paper proposes a model based on logical rules abstracted from historical dynamic fluctuation trends and the corresponding inconsistencies. In the logical rule training stage, the dynamic trend states of up and down are mapped to the two dimensions of truth-membership and false-membership of neutrosophic sets, respectively. Meanwhile, information entropy is employed to quantify the inconsistency of a period of history, which is mapped to the indeterminercy-membership of th...
Analyzing and predicting the high frequency trading (HFT) financial data stream is very challenging ...
Time series forecasting plays an important role in financial activities since it allows investors to...
There are many approaches to improve the forecasted accuracy of model based on fuzzy time series suc...
Most existing high-order prediction models abstract logical rules that are based on historical discr...
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...
Most existing fuzzy forecasting models partition historical training time series into fuzzy time ser...
An increasing number of scholars have tried to incorporate external factors affecting the disturbanc...
In this paper, we propose a hybrid method to forecast the stock prices called High-order-fuzzy-fluct...
Many of the existing autoregressive moving average (ARMA) forecast models are based on one main fact...
This paper introduces an entropy-based belief function to the forecasting problem. While the likelih...
To forecast a complex and non-linear system, such as a stock market, advanced artificial intelligenc...
This book shows the potential of entropy and information theory in forecasting, including both theor...
Traditional time series forecasting models mainly assume a clear and definite functional relationshi...
Abstract This paper deals with the prediction of chaotic time series by using the multi-stage fuzzy ...
Analyzing and predicting the high frequency trading (HFT) financial data stream is very challenging ...
Time series forecasting plays an important role in financial activities since it allows investors to...
There are many approaches to improve the forecasted accuracy of model based on fuzzy time series suc...
Most existing high-order prediction models abstract logical rules that are based on historical discr...
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...
Most existing fuzzy forecasting models partition historical training time series into fuzzy time ser...
An increasing number of scholars have tried to incorporate external factors affecting the disturbanc...
In this paper, we propose a hybrid method to forecast the stock prices called High-order-fuzzy-fluct...
Many of the existing autoregressive moving average (ARMA) forecast models are based on one main fact...
This paper introduces an entropy-based belief function to the forecasting problem. While the likelih...
To forecast a complex and non-linear system, such as a stock market, advanced artificial intelligenc...
This book shows the potential of entropy and information theory in forecasting, including both theor...
Traditional time series forecasting models mainly assume a clear and definite functional relationshi...
Abstract This paper deals with the prediction of chaotic time series by using the multi-stage fuzzy ...
Analyzing and predicting the high frequency trading (HFT) financial data stream is very challenging ...
Time series forecasting plays an important role in financial activities since it allows investors to...
There are many approaches to improve the forecasted accuracy of model based on fuzzy time series suc...