Yıl: 2023 Cilt: 9 Sayı: 4 Sayfa Aralığı: 687 - 696 Metin Dili: İngilizce DOI: 10.18621/eurj.1037546 İndeks Tarihi: 05-07-2023

Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance

Öz:
Objectives: The performances of the Kruskal-Wallis test, the van der Waerden test, the modified version of Kruskal-Wallis test based on permutation test, the Mood's Median test and the Savage test, which are among the non-parametric alternatives of one-way analysis of variance and included in the literature, to protect the Type-I error probability determined at the beginning of the trial at a nominal level, were compared with the F test. Methods: Performance of the tests to protect Type-I error; in cases where the variances are homogeneous/heterogeneous, the sample sizes are balanced/unbalanced, the distribution of the data is in accordance with the normal distribution/the log-normal distribution, how it is affected by the change in the number of groups to be compared has been examined on simulation scenarios. Results: The Kruskal-Wallis test, the van der Waerden test, the modified version of the Kruskal-Wallis test based on the permutation test were not affected by the distribution of the data, but by the violation of the homogeneity of the variances. The performance of the Mood's Median test and the Savage test were not found to be sufficient in terms of protection of theType-I error compared to other tests. Conclusions: It was determined that the Kruskal-Wallis test, the van der Waerden test, the modified version of Kruskal-Wallis test based on permutation test were not affected by the distribution of the data and tended to preserve the Type-І error when the variances were homogeneous.
Anahtar Kelime: Analysis of variance conformity of normal distribution non-parametric k-sample tests

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA MACUNLUOĞLU A, OCAKOGLU G (2023). Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. , 687 - 696. 10.18621/eurj.1037546
Chicago MACUNLUOĞLU Aslı Ceren,OCAKOGLU Gokhan Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. (2023): 687 - 696. 10.18621/eurj.1037546
MLA MACUNLUOĞLU Aslı Ceren,OCAKOGLU Gokhan Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. , 2023, ss.687 - 696. 10.18621/eurj.1037546
AMA MACUNLUOĞLU A,OCAKOGLU G Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. . 2023; 687 - 696. 10.18621/eurj.1037546
Vancouver MACUNLUOĞLU A,OCAKOGLU G Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. . 2023; 687 - 696. 10.18621/eurj.1037546
IEEE MACUNLUOĞLU A,OCAKOGLU G "Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance." , ss.687 - 696, 2023. 10.18621/eurj.1037546
ISNAD MACUNLUOĞLU, Aslı Ceren - OCAKOGLU, Gokhan. "Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance". (2023), 687-696. https://doi.org/10.18621/eurj.1037546
APA MACUNLUOĞLU A, OCAKOGLU G (2023). Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. The European Research Journal, 9(4), 687 - 696. 10.18621/eurj.1037546
Chicago MACUNLUOĞLU Aslı Ceren,OCAKOGLU Gokhan Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. The European Research Journal 9, no.4 (2023): 687 - 696. 10.18621/eurj.1037546
MLA MACUNLUOĞLU Aslı Ceren,OCAKOGLU Gokhan Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. The European Research Journal, vol.9, no.4, 2023, ss.687 - 696. 10.18621/eurj.1037546
AMA MACUNLUOĞLU A,OCAKOGLU G Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. The European Research Journal. 2023; 9(4): 687 - 696. 10.18621/eurj.1037546
Vancouver MACUNLUOĞLU A,OCAKOGLU G Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance. The European Research Journal. 2023; 9(4): 687 - 696. 10.18621/eurj.1037546
IEEE MACUNLUOĞLU A,OCAKOGLU G "Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance." The European Research Journal, 9, ss.687 - 696, 2023. 10.18621/eurj.1037546
ISNAD MACUNLUOĞLU, Aslı Ceren - OCAKOGLU, Gokhan. "Comparison of the performances of non-parametric k-sample test procedures as an alternative to one-way analysis of variance". The European Research Journal 9/4 (2023), 687-696. https://doi.org/10.18621/eurj.1037546