Memet Ali Cengiz
Not Available
Yuksel Bek
Not Available
Rezan Yilmaz
Not Available
ABSTRACT
Response variables having two possible categories are called binary variables. We often describe two possible categories as the terms of disease and healthy. Binary response data are modelled using the binomial distribution while binary data may be assumed to have the Bernoulli distribution which is a special case of the binomial distribution. This paper investigates logistic regression model to improve the accuracy of predictions and decisions, in the specific context of assessing erythrocyte sedimentation rate. The analysis is enhanced further by adopting a Bayesian approach.
PDF References Citation
How to cite this article
Memet Ali Cengiz, Yuksel Bek and Rezan Yilmaz, 2001. Bayesian Inference of Binary Logistic Regression Model for Assessing Erythrocyte Sedimentation Rate. Pakistan Journal of Biological Sciences, 4: 1180-1183.
DOI: 10.3923/pjbs.2001.1180.1183
URL: https://scialert.net/abstract/?doi=pjbs.2001.1180.1183
DOI: 10.3923/pjbs.2001.1180.1183
URL: https://scialert.net/abstract/?doi=pjbs.2001.1180.1183
REFERENCES
- Sox, H.C.J. and M.H. Liang, 1986. The erythrocyte sedimentation rate: Guidelines for rational use. Ann. Int. Med., 104: 515-523.
CrossRefPubMedDirect Link