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Articles

Normality and significance testing in simple linear regression model for large sample sizes: a simulation study

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Pages 2781-2797 | Received 01 Mar 2020, Accepted 09 Apr 2021, Published online: 02 May 2021
 

Abstract

Data analysis techniques that rely on standard statistical tools and algorithms often encounter problems when dealing with data sets that have large sample sizes. In this study, two statistical tests done in conducting simple linear regression analysis were revisited. In particular, the study simulated the effects of large sample sizes and amount of contamination in the data due to non-sampling errors on the false positive rate of the Kolmogorov-Smirnov (K-S) test in testing for normality of error terms. The study also characterized the effects of varying sample size and amount of contamination in the data on the false negative rate of the t-test in testing the significance of a regression coefficient. Lastly, an optimality index was developed to determine the sample sizes and the values of the percent noise at which both the false positive rate of the K-S test and the false negative rate of the t-test are minimized.

Acknowledgments

X. J. Bilon thanks Prof. Erniel B. Barrios, PhD of School of Statistics, University of the Philippines Diliman for useful discussions on the methodology of this article.

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