Comparison between Linear Regression and Robust Regression Models by Using Error Criteria and Information Criteria Applied to Human Sample

المؤلفون

  • Ismat Mousa Ibrahim Technical College of Duhok, Department of Dental Technology, Duhok Polytechnic University, Duhok, Iraq

DOI:

https://doi.org/10.21271/zjhs.29.2.14

الكلمات المفتاحية:

مقدر OLS، مقدر LTS، مقدر MM، MSE، SAZ1، SAZ2، AIC وBIC.

الملخص

ارتفاع ضغط الدم هو مرض شائع وخطير، ولهذا السبب تم اختيار عينة من المرضى من مستشفى آزادي التعليمي في دهوك، وتم إجراء مقارنة بين المربعات الصغرى العادية مع بعض الطرق القوية، في هذه الدراسة تم إجراء مقارنة بين المربعات الصغرى العادية مع طريقتين قويتين، مقدر المربعات الصغرى المشرذمة (LTS) ومقدر نوع الاحتمال الأقصى المعدل (MM)، تم تقييمها باستخدام نوعين من المعايير ممثلة بمعايير الخطأ (MSE، MAPE، MSAE، SAZ1، SAZ2،) ومعايير المعلومات (AIC، BIC). أظهرت الطرائق الحصينة (Robost) كفاءة عالية في حساب القيم من خلال جمع المعايير. وقد أظهرت النتائج نسبة جيدة من حيث معايير الخطأ ومعايير المعلومات.

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منشور

2025-04-15

كيفية الاقتباس

Ismat Mousa Ibrahim. (2025). Comparison between Linear Regression and Robust Regression Models by Using Error Criteria and Information Criteria Applied to Human Sample. مجلة زانكۆ للعلوم الإنسانية, 29(2), 298–313. https://doi.org/10.21271/zjhs.29.2.14

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