The aim of this research is to propose a new hybrid model, i.e. Generalized Space-Time Autoregressive with Exogenous Variable and Neural Network (GSTARX-NN) model for forecasting space-time data with calendar variation effect. GSTARX model represented as a linear component with exogenous variable particularly an effect of calendar variation, such as Eid Fitr. Whereas, NN was a model for handling a nonlinear component. There were two studies conducted in this research, i.e. simulation studies and applications on monthly inflow and outflow currency data in Bank Indonesia at East Java region. The simulation study showed that the hybrid GSTARX-NN model could capture well the data patterns, i.e. trend, seasonal, calendar variation, and both line...
The forecast is more accurate when involving an exogen, for example, the generalized spatio temporal...
Perkembangan data time series menunjukan bahwa seringkali suatu data tidak hanya mempunyai dimensi w...
Time series forecasting is a vital issue for many institutions. In the literature, many researchers ...
VARX and GSTARX models are an extension of Vector Autoregressive (VAR) and Generalized Space-Time Au...
In this article, several types of hybrid forecasting models are suggested. In particular, hybrid mod...
Spatio-temporal model that have been developed such as Space-Time Autoregressive (STAR) model, Gener...
Data memiliki dimensi waktu dan dimensi ruang yang disebut data space-time. Generalized Spaced-time ...
Generalized Space-Time Autoregressive (GSTAR) merupakan model peramalan data spatio-temporal. Selanj...
This study proposes hybrid methods by combining Singular Spectrum Analysis and Neural Network (SSA-N...
Selain berdimensi waktu, data juga bisa berdimensi ruang yang dikenal dengan data space-time. Model ...
Forecasting of rainfall trends is essential for several fields, such as airline and ship management,...
The aim of this paper is to propose a novel approach in hybridizing linear and nonlinear model by in...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
Salah satu metode untuk memodelkan data space-time adalah Generalized Space-Time Autoregressive (GST...
Model Multivariate Generalized Space-Time (MGSTAR) merupakan model untuk peramalan data space-time d...
The forecast is more accurate when involving an exogen, for example, the generalized spatio temporal...
Perkembangan data time series menunjukan bahwa seringkali suatu data tidak hanya mempunyai dimensi w...
Time series forecasting is a vital issue for many institutions. In the literature, many researchers ...
VARX and GSTARX models are an extension of Vector Autoregressive (VAR) and Generalized Space-Time Au...
In this article, several types of hybrid forecasting models are suggested. In particular, hybrid mod...
Spatio-temporal model that have been developed such as Space-Time Autoregressive (STAR) model, Gener...
Data memiliki dimensi waktu dan dimensi ruang yang disebut data space-time. Generalized Spaced-time ...
Generalized Space-Time Autoregressive (GSTAR) merupakan model peramalan data spatio-temporal. Selanj...
This study proposes hybrid methods by combining Singular Spectrum Analysis and Neural Network (SSA-N...
Selain berdimensi waktu, data juga bisa berdimensi ruang yang dikenal dengan data space-time. Model ...
Forecasting of rainfall trends is essential for several fields, such as airline and ship management,...
The aim of this paper is to propose a novel approach in hybridizing linear and nonlinear model by in...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
Salah satu metode untuk memodelkan data space-time adalah Generalized Space-Time Autoregressive (GST...
Model Multivariate Generalized Space-Time (MGSTAR) merupakan model untuk peramalan data space-time d...
The forecast is more accurate when involving an exogen, for example, the generalized spatio temporal...
Perkembangan data time series menunjukan bahwa seringkali suatu data tidak hanya mempunyai dimensi w...
Time series forecasting is a vital issue for many institutions. In the literature, many researchers ...