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http://dx.doi.org/10.5351/KJAS.2021.34.6.889

Extending the calibration between empirical influence function and sample influence function to t-statistic  

Kang, Hyunseok (Ministry of Education)
Kim, Honggie (Department of Information and Statistics, Chungnam National University)
Publication Information
The Korean Journal of Applied Statistics / v.34, no.6, 2021 , pp. 889-904 More about this Journal
Abstract
This study is a follow-up study of Kang and Kim (2020). In this study, we derive the sample influence functions of the t-statistic which were not directly derived in previous researches. Throughout these results, we both mathematically examine the relationship between the empirical influence function and the sample influence function, and consider a method to approximate the sample influence function by the empirical influence function. Also, the validity of the relationship between an approximated sample influence function and the empirical influence function is verified by a simulation of a random sample of size 300 from normal distribution. As a result of the simulation, the relationship between the sample influence function which is derived from the t-statistic and the empirical influence function, and the method of approximating the sample influence function through the empirical influence function were verified. This research has significance in proposing both a method which reduces errors in approximation of the empirical influence function and an effective and practical method that evolves from previous research which approximates the sample influence function directly through the empirical influence function by constant revision.
Keywords
influence function; outlier; t-statistic; empirical influence function; sample influence function;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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