A COMPARATIVE STUDY OF THE EFFICIENCY PROPERTIES OF IMPROVED ESTIMATORS IN THE LINEAR REGRESSION MODEL

Authors

  • Neeraj Rani Guru Kashi University, Talwandi Sabo Author
  • Daljeet Kaur Guru Kashi University, Talwandi Sabo Author

DOI:

https://doi.org/10.61841/yrnbgd48

Keywords:

Regression, Linear, Model, Variable, Predictor

Abstract

The emergence of various assessors of the boundaries of direct relapse models, particularly when applied to genuine conditions, can be followed by the non-legitimacy of the suppositions under which the model is generated. Regression analysis can be used to produce predictions in any case. Because regression analysis typically involves nonexperimental data, related variables are frequently included in the analysis. Multicollinearity in relapse models happens when at least two indicator factors are related to each other. Because of this issue, the worth of the least squares registered relapse coefficients can become restrictive on the connected indicator factors in the model. As a result, this study took into account the concept of an upgraded estimate using principal component regression as well as the theoretical features of the suggested estimator. 

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Published

30.06.2021

How to Cite

A COMPARATIVE STUDY OF THE EFFICIENCY PROPERTIES OF IMPROVED ESTIMATORS IN THE LINEAR REGRESSION MODEL. (2021). International Journal of Psychosocial Rehabilitation, 25(3), 1328-1336. https://doi.org/10.61841/yrnbgd48