Discriminating Between Second-Order Model With/Without Interaction Base on Central Tendency Estimation

Publication Date: 08/10/2021

DOI: 10.52589/AJMSS-71MQSBGZ


Author(s): P. S. Owhondah, D. Enegesele, O.E. Biu, D.S.A. Wokoma.

Volume/Issue: Volume 4 , Issue 3 (2021)



Abstract:

The study deals with discriminating between the second-order models with/without interaction on central tendency estimation using the ordinary least square (OLS) method for the estimation of the model parameters. The paper considered two different sets of data (small and large) sample size. The small sample size used data of unemployment rate as a response, inflation rate and exchange rate as the predictors from 2007 to 2018 and the large sample size was data of flow-rate on hydrate formation for Niger Delta deep offshore field. The〖 R〗^2, AIC, SBC, and SSE were computed for both data sets to test for adequacy of the models. The results show that all three models are similar for smaller data set while for large data set the second-order model centered on the median with/without interaction is the best base on the number of significant parameters. The model’s selection criterion values (R^2, AIC, SBC, and SSE) were found to be equal for models centered on median and mode for both large and small data sets. However, the model centered on median and mode with/without interaction were better than the model centered on the mean for large data sets. This study shows that the second-order regression model centered on median and mode are better than the model centered on the mean for large data set, while they are similar for smaller data set. Hence, the second-order regression model centered on median and mode with or without interaction are better than the second-order regression model centered on the mean.


Keywords:

Second-Order Model With/Without Interaction, Central Tendency Estimation, Ordinary Least Square, Test For Adequacy, Small Sample Size, and Large Sample Size.


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