The vector autoregressive (VAR) approach is useful in many situations involving model development for multivariables time series. VAR model was utilised in this study and applied in modelling and forecasting four meteorological variables. The variables are n rainfall data, humidity, wind speed and temperature. However, the model failed to address the heteroscedasticity problem found in the variables, as such, multivariate GARCH, namely, dynamic conditional correlation (DCC) was incorporated in the VAR model to confiscate the problem of heteroscedasticity. The results showed that the use of the VAR coupled with the recognition of time-varying variances DCC produced good forecasts over long forecasting horizons as compared with VAR mode...
We constructed an automatic multivariate time series algorithm and implemented that algorithm into R...
There are three regions of rainfall that has been formed, each rainfall regions has a va...
Forecasting technique is an important component of decision making because it aims to predict values...
The vector autoregressive (VAR) approach is useful in many situations involving model development fo...
An extreme rainfall event, high temperature, haze, glacier melting, rises of sea level, and droughts...
Weather and climate information is useful in a variety of areas including agriculture, tourism, tran...
Agriculture sector throughout the world including Bangladesh is extremely vulnerable to the negative...
Vector Autoregression (VAR) has some very attractive features and has provided a valuable tool for a...
Abstract—Agricultural and plantation activities in Indonesia, especially in Semarang, Central Java, ...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
Model Vector Autoregressive (VAR) merupakan pengembangan dari model Autoregressive (AR) pada kasus ...
One of the problems in modelling multivariate time series is stationary. Stationary test results do ...
Simulation is used to measure the robustness and the efficiency of the forecast-ing techniques perfo...
We propose a vector autoregressive moving average process as a model for daily weather data. For the...
Forecasting volatility in a multivariate framework has received many contributions in the recent li...
We constructed an automatic multivariate time series algorithm and implemented that algorithm into R...
There are three regions of rainfall that has been formed, each rainfall regions has a va...
Forecasting technique is an important component of decision making because it aims to predict values...
The vector autoregressive (VAR) approach is useful in many situations involving model development fo...
An extreme rainfall event, high temperature, haze, glacier melting, rises of sea level, and droughts...
Weather and climate information is useful in a variety of areas including agriculture, tourism, tran...
Agriculture sector throughout the world including Bangladesh is extremely vulnerable to the negative...
Vector Autoregression (VAR) has some very attractive features and has provided a valuable tool for a...
Abstract—Agricultural and plantation activities in Indonesia, especially in Semarang, Central Java, ...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
Model Vector Autoregressive (VAR) merupakan pengembangan dari model Autoregressive (AR) pada kasus ...
One of the problems in modelling multivariate time series is stationary. Stationary test results do ...
Simulation is used to measure the robustness and the efficiency of the forecast-ing techniques perfo...
We propose a vector autoregressive moving average process as a model for daily weather data. For the...
Forecasting volatility in a multivariate framework has received many contributions in the recent li...
We constructed an automatic multivariate time series algorithm and implemented that algorithm into R...
There are three regions of rainfall that has been formed, each rainfall regions has a va...
Forecasting technique is an important component of decision making because it aims to predict values...