scholarly journals A Novel Generalized Ridge Regression Method for Quantitative Genetics

Genetics ◽  
2013 ◽  
Vol 193 (4) ◽  
pp. 1255-1268 ◽  
Author(s):  
Xia Shen ◽  
Moudud Alam ◽  
Freddy Fikse ◽  
Lars Rönnegård
2020 ◽  
Vol 22 (2) ◽  
pp. 228-236
Author(s):  
Mahdi Roozbeh ◽  
Seyed Mohammad Malekjafarian ◽  
Monireh Manavi ◽  
Malihe Sadat Malekjafarian ◽  
◽  
...  

2019 ◽  
Vol 25 (110) ◽  
pp. 392
Author(s):  
دجلة ابراهيم مهدي ◽  
حلا سلمان فرحان

نظرا لما تعانيـه تجارب الخليط من مشكلة الارتبـاطات العالية ووجود مشكلة التعدد الخطي بين المتغيرات التوضيحية وذلك لوجود قيد الوحدة والتفاعلات بينها في النموذج مما يزيد من وجود الارتباطات بين المتغيرات النوضيحية وهذا ما يوضحه عامل تضخم التباين Variance Inflation Vector (VIF) , كذلك تم التطـرق الى استخـدام تحويل المكونات الزائفة للحـدود الدنيا (L-Pseudo component) للتقليل من الارتباطات بين مكونات الخليط .    لتقدير معالم ٳنموذج الخليط اعتمدنا في بحثنا على استخدام طرائق تقدير تعمل على زيادة التحيز وتقلل من التباين منها طريقة ٳنحدار الحرف Ridge Regression Method وطريقة تقدير (Least Absolute Shrinkage and Selection Operator) (LASSO) فضلا عن طريقة تقدير الشبكة المرنة Elastic Net , وتمثيله باستخدام المحاكاة بلغة R بمعيار المقارنة متوسط مطلق الخطأ النسبي Mean Absolute Percentage Error (MAPE).


2021 ◽  
Vol 10 (2) ◽  
pp. 257-264
Author(s):  
Zhijian Zhou ◽  
Zhilong Liu ◽  
Wenduo Li ◽  
Yihang Wang ◽  
Chao Wang

Abstract. Aeromagnetic exploration is an important method of geophysical exploration. We study the compensation method of the towed bird system and establish the towed bird interference model. Due to the geomagnetic gradient changing greatly, the geomagnetic gradient is considered in the towed bird interference model. In this paper, we model the geomagnetic field gradient and analyze the influence of the towed bird system on the aeromagnetic compensation results. Finally, we apply the ridge regression method to solve the problem. We verify the feasibility of this compensation method through actual flight tests and further improve the data quality of the towed bird interference.


Author(s):  
Jiangping Mei ◽  
Jiawei Zang ◽  
Yabin Ding

This paper deals with the home error (the initial position error of active link) identification of a 2-DOF parallel robot. The identification model containing the home errors of the robot and the assembly errors of a new measuring instrument is developed using distance measurement. After that, an adaptive ridge regression method and a regularized Kalman filter method are proposed to improve the identification reliability and accuracy. Particularly, a modified L-curve method is proposed to provide suitable regularization parameters for the regularized Kalman filter. Based on the selected optimal measurement positions, experiments are carried out, in which the two regularized identification methods are compared with the ordinary ridge regression and the Kalman filter methods. Results show that the reliability and accuracy of the two methods are much better than the ordinary ridge regression method, and the divergence problem of the Kalman filter can be well resolved by the regularized Kalman filter.


2015 ◽  
Vol 2015 ◽  
pp. 1-18 ◽  
Author(s):  
Ronald de Vlaming ◽  
Patrick J. F. Groenen

In recent years, there has been a considerable amount of research on the use of regularization methods for inference and prediction in quantitative genetics. Such research mostly focuses on selection of markers and shrinkage of their effects. In this review paper, the use ofridge regressionfor prediction in quantitative genetics usingsingle-nucleotide polymorphismdata is discussed. In particular, we consider (i) the theoretical foundations of ridge regression, (ii) its link to commonly used methods in animal breeding, (iii) the computational feasibility, and (iv) the scope for constructing prediction models with nonlinear effects (e.g.,dominanceandepistasis). Based on a simulation study we gauge the current and future potential of ridge regression for prediction of human traits using genome-wide SNP data. We conclude that, for outcomes with a relatively simple genetic architecture, given current sample sizes in most cohorts (i.e.,N<10,000) the predictive accuracy of ridge regression is slightly higher than the classicalgenome-wide association studyapproach ofrepeated simple regression(i.e., one regression per SNP). However, both capture only a small proportion of the heritability. Nevertheless, we find evidence that for large-scale initiatives, such as biobanks, sample sizes can be achieved where ridge regression compared to the classical approach improves predictive accuracy substantially.


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