This paper establishes a low cost inferential model that allows reliable time series forecasts. The model provides a naive unique computationally straightforward approach based on widely-used additive models. It refers to the decomposition of every time series value in “random” components, which are compounded to constitute a “Fibonacci type” predictor random variable. The expected value of this predictor gives a forecast of a future time series value. The standard deviation of the predictor serves to construct a prediction interval at a predefined confidence level. The major features of our model are: forecasting accuracy, simplicity of the implementation technique, generic usefulness, and extremely low cost effort. These features enable o...
Abstract: Quantitative methods to forecasting tourist arrivals can be sub-divided into causal method...
It has always been difficult to model the travel industry because tourism involves such a diverse se...
With the growth of the world's tourism industry, researchers took advantage to conduct numerous stud...
This paper establishes a low cost inferential model that allows reliable time series forecasts. The ...
This paper evaluates the use of several parametric and nonparametric forecasting techniques for pred...
The paper provides a short-run estimation of international tourism demand focusing on the case of F....
Tourism demand forecasts are of great economic value both for the public and private sector. Any inf...
We evaluate the performances of various methods for forecasting tourism data. The data used include ...
This paper presents a time series forecasting method to predict of occupancy of all tourist accommod...
This paper is about the estimation of tourism demand which is a foundation of all tourism-related bu...
The paper provides a short-run estimation of international tourism demand focusing on the case of F....
This study evaluates the forecasting accuracy of five alternative econometric models in the context ...
The purpose of this paper is to construct adequate seasonal ARIMA models, using Box-Jenkins methodol...
The aim of this thesis is to evaluate the effectiveness of six selected low computational cost hotel...
Abstract Purpose- There is a lack of studies on tourism demand forecasting that use non-linear model...
Abstract: Quantitative methods to forecasting tourist arrivals can be sub-divided into causal method...
It has always been difficult to model the travel industry because tourism involves such a diverse se...
With the growth of the world's tourism industry, researchers took advantage to conduct numerous stud...
This paper establishes a low cost inferential model that allows reliable time series forecasts. The ...
This paper evaluates the use of several parametric and nonparametric forecasting techniques for pred...
The paper provides a short-run estimation of international tourism demand focusing on the case of F....
Tourism demand forecasts are of great economic value both for the public and private sector. Any inf...
We evaluate the performances of various methods for forecasting tourism data. The data used include ...
This paper presents a time series forecasting method to predict of occupancy of all tourist accommod...
This paper is about the estimation of tourism demand which is a foundation of all tourism-related bu...
The paper provides a short-run estimation of international tourism demand focusing on the case of F....
This study evaluates the forecasting accuracy of five alternative econometric models in the context ...
The purpose of this paper is to construct adequate seasonal ARIMA models, using Box-Jenkins methodol...
The aim of this thesis is to evaluate the effectiveness of six selected low computational cost hotel...
Abstract Purpose- There is a lack of studies on tourism demand forecasting that use non-linear model...
Abstract: Quantitative methods to forecasting tourist arrivals can be sub-divided into causal method...
It has always been difficult to model the travel industry because tourism involves such a diverse se...
With the growth of the world's tourism industry, researchers took advantage to conduct numerous stud...