Abstract
The work presents various techniques of the logistic and multinomial-logit modeling with their modifications. These methods are useful for regression modeling with a binary or categorical outcome, structuring in regression and clustering, singular value decomposition and principal component analysis with positive loadings, and numerous other applications. Particularly, these models are employed in the discrete choice modeling and the best-worst scaling known in applied psychology and socio-economics studies.
Subject
Applied Mathematics,Modeling and Simulation,Statistics and Probability
Reference29 articles.
1. Entropy criterion in logistic regression and shapley value of predictors;Lipovetsky;Journal of Modern Applied Statistical Methods,2006
2. Van westendrop price sensitivity in statistical modeling;Lipovetsky;International Journal of Operations and Quantitative Management,2006
3. Multinomial structuring in linear regression;Lipovetsky;Model Assisted Statistics and Applications,2008
4. Bradley-terry choice probability in maximum likelihood and eigenproblem solutions;Lipovetsky;International Journal of Information Technology & Decision Making,2008
5. Regression with individual coefficients defined via multinomial shares of predictors;Lipovetsky;International Journal of Operations and Quantitative Management,2009
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