Yıl 2016, Cilt 7 , Sayı 2, Sayfalar 296 - 308 2016-12-20

Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances

Taliha KELEŞ [1] , Murat ALTUN [2]


Regression analysis is a statistical technique for investigating and modeling the relationship between variables. The purpose of this study was the trivial presentation of the equation for orthogonal regression (OR) and the comparison of classical linear regression (CLR) and OR techniques with respect to the sum of squared perpendicular distances. For that purpose, the analyses were shown by an example. It was found that the sum of squared perpendicular distances of OR is smaller. Thus, it was seen that OR line has appeared to present a much better fit for the data than CLR line. Depending on those results, the OR is thought to be a regression technique to obtain more accurate results than CLR at simple linear regression studies.

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Bölüm Makaleler
Yazarlar

Yazar: Taliha KELEŞ

Yazar: Murat ALTUN

Tarihler

Yayımlanma Tarihi : 20 Aralık 2016

Bibtex @ { epod287121, journal = {Journal of Measurement and Evaluation in Education and Psychology}, issn = {1309-6575}, eissn = {1309-6575}, address = {}, publisher = {Eğitimde ve Psikolojide Ölçme ve Değerlendirme Derneği}, year = {2016}, volume = {7}, pages = {296 - 308}, doi = {}, title = {Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances}, key = {cite}, author = {Keleş, Taliha and Altun, Murat} }
APA Keleş, T , Altun, M . (2016). Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances . Journal of Measurement and Evaluation in Education and Psychology , 7 (2) , 296-308 . Retrieved from https://dergipark.org.tr/tr/pub/epod/issue/27273/287121
MLA Keleş, T , Altun, M . "Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances" . Journal of Measurement and Evaluation in Education and Psychology 7 (2016 ): 296-308 <https://dergipark.org.tr/tr/pub/epod/issue/27273/287121>
Chicago Keleş, T , Altun, M . "Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances". Journal of Measurement and Evaluation in Education and Psychology 7 (2016 ): 296-308
RIS TY - JOUR T1 - Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances AU - Taliha Keleş , Murat Altun Y1 - 2016 PY - 2016 N1 - DO - T2 - Journal of Measurement and Evaluation in Education and Psychology JF - Journal JO - JOR SP - 296 EP - 308 VL - 7 IS - 2 SN - 1309-6575-1309-6575 M3 - UR - Y2 - 2020 ER -
EndNote %0 Eğitimde ve Psikolojide Ölçme ve Değerlendirme Dergisi Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances %A Taliha Keleş , Murat Altun %T Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances %D 2016 %J Journal of Measurement and Evaluation in Education and Psychology %P 1309-6575-1309-6575 %V 7 %N 2 %R %U
ISNAD Keleş, Taliha , Altun, Murat . "Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances". Journal of Measurement and Evaluation in Education and Psychology 7 / 2 (Aralık 2016): 296-308 .
AMA Keleş T , Altun M . Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances. Journal of Measurement and Evaluation in Education and Psychology. 2016; 7(2): 296-308.
Vancouver Keleş T , Altun M . Comparison of Classical Linear Regression and Orthogonal Regression According to the Sum of Squares Perpendicular Distances. Journal of Measurement and Evaluation in Education and Psychology. 2016; 7(2): 296-308.