Abstract

Major current econometric stochastic series forecast research are established on the failure of the scholastic process tests to differentiate between finite and stationary alternative samples of the unit root hypothesis results. The importance of forecast evaluation allows researchers to reasonably monitor and improve forecast performance. While a structured improved forecast framework have often been suggested as one possible alternative, an extended the multivariate model which incorporate distributed-lag period for independent variable gives a unique advantage over the traditional distributed-lag model and the mathematical formulation does essentially guarantee that predicated equation irrespective of the values of the predictor variables. Hence, the primary objective is mainly to determine the likelihood of autoregressive integrated moving average (ARIMA) method for practicable process choice used for predicting key economic variables for a set of market data. Once the process has been known, parameters have been obtained, and the adequacy of the model has been determined, forecasts can be checked for reliability.

Highlights

  • The primary objective is mainly to determine the likelihood of autoregressive integrated moving average (ARIMA) method for practicable process choice used for predicting key economic variables for a set of market data

  • The general knowledge in the fields of economics and finance reveals that the time of complete doubt is the optimal time to buy, and while the time of maximum confidence is the optimal time to sell

  • Forecasts are of great significance and generally deployed in economics and trade; and sound forecasts technically lead to clear decisions

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Summary

Introduction

The general knowledge in the fields of economics and finance reveals that the time of complete doubt is the optimal time to buy, and while the time of maximum confidence is the optimal time to sell. Causal forecasting model uses historical data to estimate the relationship between the variable to be forecasted that is, the response variable and other variables such as independent variables or explanatory variables. It is built on a known correlation between the predicted and other exogenous variables. The econometric forecasting technique is mainly aimed to provide a more process for producing forecast values of a trade system grounded on current well established trade relationships that are designed to integrate a range of economic associations appropriate for long-term forecasts (Clements and Hendry, 2002). Once the process has been known, parameters have been obtained, and the adequacy of the model has been determined, forecasts can be checked for reliability

Prior Studies
The Theoretical Framework
Model Selection
Conclusions
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