AbstractOne of the key issues in constructing monetary policy is accurate prediction of the inflation level. The complex behavior and non-linear nature of the financial markets makes it hard to forecast the inflation rate precisely. This paper introduces a hybrid model that attempts to forecast the inflation rate with a combination of a subtractive clustering technique and a fuzzy inference neural network to overcome the shortcomings of the individual methodologies. Selected macroeconomic factors were used to predict the historical CPI data from the US Markets. The results of the proposed hybrid model are measured in RMSE
several neural network architectures to the problem of simulating and predicting the dynamic behavio...
The accuracy of inflation forecasts has important implications for macroeconomic stability and real ...
This paper investigates whether a specific type of a recurrent neural network, in particular Jordan ...
AbstractThe dynamic, non-linear, volatile and complex nature of interest rates makes it hard to pred...
Economic indicators such as Consumer Price Index (CPI) have frequently used in predicting future eco...
Abstract- Artificial neural networks (ANNs) are promising approaches for financial time series predi...
Inflation is the tendency of increasing prices of goods in general and happens continuously. Indon...
The aim of the article is to analyze inflation factors and their influence on the consumer price ind...
AbstractThe following paper discusses the use of a hybrid model for the prediction of short-term US ...
Inflation is the tendency of increasing prices of goods in general and happens continuously. Indones...
3rd Economics & Business Research Festival. Proceeding Seminar &Call For Papers : Business Dynamics ...
Prediction of inflation is needed by policy makers, investors and companies to plan economic strateg...
In this work we use a Neural Network model to forecast Mexican inflation. Related works forecast inf...
This paper deals with application of quantitative soft computing prediction models into financial ar...
This paper applies linear and neural network-based "thick" models for forecasting inflation based on...
several neural network architectures to the problem of simulating and predicting the dynamic behavio...
The accuracy of inflation forecasts has important implications for macroeconomic stability and real ...
This paper investigates whether a specific type of a recurrent neural network, in particular Jordan ...
AbstractThe dynamic, non-linear, volatile and complex nature of interest rates makes it hard to pred...
Economic indicators such as Consumer Price Index (CPI) have frequently used in predicting future eco...
Abstract- Artificial neural networks (ANNs) are promising approaches for financial time series predi...
Inflation is the tendency of increasing prices of goods in general and happens continuously. Indon...
The aim of the article is to analyze inflation factors and their influence on the consumer price ind...
AbstractThe following paper discusses the use of a hybrid model for the prediction of short-term US ...
Inflation is the tendency of increasing prices of goods in general and happens continuously. Indones...
3rd Economics & Business Research Festival. Proceeding Seminar &Call For Papers : Business Dynamics ...
Prediction of inflation is needed by policy makers, investors and companies to plan economic strateg...
In this work we use a Neural Network model to forecast Mexican inflation. Related works forecast inf...
This paper deals with application of quantitative soft computing prediction models into financial ar...
This paper applies linear and neural network-based "thick" models for forecasting inflation based on...
several neural network architectures to the problem of simulating and predicting the dynamic behavio...
The accuracy of inflation forecasts has important implications for macroeconomic stability and real ...
This paper investigates whether a specific type of a recurrent neural network, in particular Jordan ...