Abstract
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method to reduce the effects of multicollinearity. The logistic regression model is a well-known model in application when the response variable is binary data. However, it is known that multicollinearity negatively affects the variance of maximum likelihood estimator of the logistic regression coefficients. To address this problem, a logistic ridge estimator has been proposed by numerous researchers. In this paper, a new Jackknifing logistic ridge estimator (NLRE) is proposed and derived. The idea behind the NLRE is to get diagonal matrix with small values of diagonal elements that leading to decrease the shrinkage parameter and, therefore, the resultant estimator can be better with small amount of bias. Our Monte Carlo simulation results suggest that the NLRE estimator can bring significant improvement relative to other existing estimators. In addition, the real application results demonstrate that the NLRE estimator outperforms both logistic ridge estimator and maximum likelihood estimator in terms of predictive performance.
Publisher
Pakistan Journal of Statistics and Operation Research
Subject
Management Science and Operations Research,Statistics, Probability and Uncertainty,Modeling and Simulation,Statistics and Probability
Reference26 articles.
1. Algamal, Z. Y., & Lee, M. H. (2015). Penalized Poisson Regression Model using adaptive modified Elastic Net Penalty. Electronic Journal of Applied Statistical Analysis, 8(2), 236-245.
2. Arashi, M., Kibria, B. M. G., & Valizade, T. (2017). On ridge parameter estimators under stochastic subspace hypothesis. Journal of Statistical Computation and Simulation, 87(5), 966–983.
3. Asar, Y., & Genç, A. (2015). New shrinkage parameters for the Liu-type logistic estimators. Communications in Statistics - Simulation and Computation, 45(3), 1094-1103. doi:10.1080/03610918.2014.995815.
4. Batah, F. S. M., Ramanathan, T. V., & Gore, S. D. (2008). The efficiency of modefied jackknife and ridge type regression estimators - A comparison. Surveys in Mathematics and its Applications, 3, 111 – 122.
5. Firinguettia, L., Kibria, B. M. G., & Araya, R. (2017). Study of Partial Least Squares and Ridge Regression Methods. Communications in Statistics - Simulation and Computation, 46(8), 6631-6644.
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