Most management decisions at all levels of the organization are as directly or indirectly depends on the circumstance of future. With regard to predict the future events in the process of decision-making plays a main role, therefore, forecasting is very important for every organizations and institutions. There is a variety of methods to predict time series. In general, these techniques can be divided as following: statistical, artificial intelligence and analytical techniques. Two of the most common methods for time series prediction is autoregressive integrated moving average (ARIMA) and artificial neural network (ANN) methods, these methods are the subset of statistical and artificial intelligence techniques respectively. In this paper, a...
This paper introduces two robust forecasting models for efficient forecasting, Artificial Neural Net...
The current study illustrates the utilization of artificial neural network in statistical methodolog...
A prediction model for tuberculosis incidence is needed in China which may be used as a decision-sup...
Mineral exploitation contributes to the economic growth of developing countries. Managing ...
A method of combining three analytic techniques including regression rule induction, the k-nearest n...
This study implements an Autoregressive Integrated Moving Average (ARIMA) model to forecast total co...
The number of mass shootings in the United States has increased in the recent decades. Understanding...
Forecasting is a method that is often used to view future events using past time data. Past time dat...
Artificial neural networks (ANN) are a powerful tool in the decision-making process, especially in s...
Copyright © 2014 Lida Barba et al. This is an open access article distributed under the Creative Com...
The inherent benefits of an accident prevention program are generally known only after an accident h...
Many applications in different domains produce large amount of time series data. Making accurate for...
Crime forecasting is an interesting application area of research with ARIMA and ANN models offer a g...
For maximum metal recovery, considering the movement of ore and waste during the blasting process in...
This study contributes to the on-going efforts to improve occupational safety in the mining industry...
This paper introduces two robust forecasting models for efficient forecasting, Artificial Neural Net...
The current study illustrates the utilization of artificial neural network in statistical methodolog...
A prediction model for tuberculosis incidence is needed in China which may be used as a decision-sup...
Mineral exploitation contributes to the economic growth of developing countries. Managing ...
A method of combining three analytic techniques including regression rule induction, the k-nearest n...
This study implements an Autoregressive Integrated Moving Average (ARIMA) model to forecast total co...
The number of mass shootings in the United States has increased in the recent decades. Understanding...
Forecasting is a method that is often used to view future events using past time data. Past time dat...
Artificial neural networks (ANN) are a powerful tool in the decision-making process, especially in s...
Copyright © 2014 Lida Barba et al. This is an open access article distributed under the Creative Com...
The inherent benefits of an accident prevention program are generally known only after an accident h...
Many applications in different domains produce large amount of time series data. Making accurate for...
Crime forecasting is an interesting application area of research with ARIMA and ANN models offer a g...
For maximum metal recovery, considering the movement of ore and waste during the blasting process in...
This study contributes to the on-going efforts to improve occupational safety in the mining industry...
This paper introduces two robust forecasting models for efficient forecasting, Artificial Neural Net...
The current study illustrates the utilization of artificial neural network in statistical methodolog...
A prediction model for tuberculosis incidence is needed in China which may be used as a decision-sup...