Forecasting is very important in many types of organizations since predictions of future events must be incorporated into the decision-making process. In the case of tourism demand, better forecast would help directors and investors make operational, tactical, and strategic decisions. Generally, in time series we can divide forecasting method into classical method and modern methods. Although recent studies show that the newer and more advanced forecasting techniques tend to result in improved forecast accuracy under certain circumstances, no clear-cut evidence shows that any one model can consistently outperform other models in the forecasting competition [1]. In this study, the forecasting performance between Box-Jenkins approaches of sea...
We evaluate the performances of various methods for forecasting tourism data. The data used include ...
The study compares the application of the forecasting methods Autoregressive Integrated Moving Avera...
<p><em>The purpose of this research is </em><em>forecasting the growth of the GDRP in Bali Province ...
Problem statement: Forecasting is very important in many types of organizations since predictions of...
Predictions of future events must be incorporated into the decision-making process. For tourism dema...
In several applications, fuzzy time series forecasting was utilized to generate predictions about th...
Literature reviews show that the most commonly studied fuzzy time series models for the purpose of f...
Tourism industry has become one of the main sources for Malaysia's income. It affects other sectors ...
The tourism industry in Malaysia has been growing significantly over the years. Tourism has been one...
Most of Seasonal Autoregressive Integrated Moving Average (SARIMA) models that used for forecasting ...
<p><em>This paper aimed to elaborates and compares the performance of Fuzzy Time Series </em>(<em>FT...
The tourism sector is one of the contributors of foreign exchange is quite influential in improving ...
Fuzzy time series is a useful alternative to conventional time series methods especially when there ...
Indonesia's economy is influenced by many factors, including the tourism sector. Through this touris...
Abstract: Quantitative methods to forecasting tourist arrivals can be sub-divided into causal method...
We evaluate the performances of various methods for forecasting tourism data. The data used include ...
The study compares the application of the forecasting methods Autoregressive Integrated Moving Avera...
<p><em>The purpose of this research is </em><em>forecasting the growth of the GDRP in Bali Province ...
Problem statement: Forecasting is very important in many types of organizations since predictions of...
Predictions of future events must be incorporated into the decision-making process. For tourism dema...
In several applications, fuzzy time series forecasting was utilized to generate predictions about th...
Literature reviews show that the most commonly studied fuzzy time series models for the purpose of f...
Tourism industry has become one of the main sources for Malaysia's income. It affects other sectors ...
The tourism industry in Malaysia has been growing significantly over the years. Tourism has been one...
Most of Seasonal Autoregressive Integrated Moving Average (SARIMA) models that used for forecasting ...
<p><em>This paper aimed to elaborates and compares the performance of Fuzzy Time Series </em>(<em>FT...
The tourism sector is one of the contributors of foreign exchange is quite influential in improving ...
Fuzzy time series is a useful alternative to conventional time series methods especially when there ...
Indonesia's economy is influenced by many factors, including the tourism sector. Through this touris...
Abstract: Quantitative methods to forecasting tourist arrivals can be sub-divided into causal method...
We evaluate the performances of various methods for forecasting tourism data. The data used include ...
The study compares the application of the forecasting methods Autoregressive Integrated Moving Avera...
<p><em>The purpose of this research is </em><em>forecasting the growth of the GDRP in Bali Province ...