Applied Mathematics and Mechanics (English Edition) ›› 1993, Vol. 14 ›› Issue (1): 73-84.

• 论文 • 上一篇    下一篇

GENERALIZED MULTIVARIATE RIDGE REGRESSION ESTIMATE AND CRITERIA Q(c) FOR CHOOSING MATRIX K

陈世基1, 曾志斌2   

  1. 1. Department of Mathematics, Fujian Normal University, Fuzhou;
    2. Statistics Bureau of Fujian Province. Fuzhou
  • 收稿日期:1991-10-18 出版日期:1993-01-18 发布日期:1993-01-18
  • 通讯作者: Lin Zong-chi
  • 基金资助:
    The projects Supported by Natural Science Foundation of Fujian Province

GENERALIZED MULTIVARIATE RIDGE REGRESSION ESTIMATE AND CRITERIA Q(c) FOR CHOOSING MATRIX K

Chen Shi-ji1, Zeng Zhi-bin2   

  1. 1. Department of Mathematics, Fujian Normal University, Fuzhou;
    2. Statistics Bureau of Fujian Province. Fuzhou
  • Received:1991-10-18 Online:1993-01-18 Published:1993-01-18
  • Supported by:
    The projects Supported by Natural Science Foundation of Fujian Province

摘要: When multicollinearity is present in a set of the regression variables, the least square estimate of the regression coefficient tends to be unstable and it may lead to erroneous inference.In this paper, generalized ridge estimate (K) of the regression coefficient β=vec(B) is considered in multivaiale linear regression model. The MSE of the above estimate is less than the MSE of the least square estimate by choosing the ridge parameter matrix K. Moreover, it is pointed out that the Criterion MSE for choosing matrix K of generalized ridge estimate has several weaknesses. In order to overcome these weaknesses, a new family of criteria Q(c) is adpoted which includes the criterion MSE and criterion LS as its special case. The good properties of the criteria Q(c) are proved and discussed from theoretical point of view. The statistical meaning of the scale c is explained and the methods of determining c are also given.

关键词: least square estimate, generalized ridge estimate, mean square error

Abstract: When multicollinearity is present in a set of the regression variables, the least square estimate of the regression coefficient tends to be unstable and it may lead to erroneous inference.In this paper, generalized ridge estimate (K) of the regression coefficient β=vec(B) is considered in multivaiale linear regression model. The MSE of the above estimate is less than the MSE of the least square estimate by choosing the ridge parameter matrix K. Moreover, it is pointed out that the Criterion MSE for choosing matrix K of generalized ridge estimate has several weaknesses. In order to overcome these weaknesses, a new family of criteria Q(c) is adpoted which includes the criterion MSE and criterion LS as its special case. The good properties of the criteria Q(c) are proved and discussed from theoretical point of view. The statistical meaning of the scale c is explained and the methods of determining c are also given.

Key words: least square estimate, generalized ridge estimate, mean square error

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