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Logistic regression against a divergent Bayesian network
Author(s) -
Noel Antonio Sánchez Trujillo
Publication year - 2015
Publication title -
medwave
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.178
H-Index - 7
ISSN - 0717-6384
DOI - 10.5867/medwave.2015.01.6075
Subject(s) - logistic regression , confounding , medicine , humanities , causality (physics) , philosophy , physics , quantum mechanics
This article is a discussion about two statistical tools used for prediction and causality assessment: logistic regression and Bayesian networks. Using data of a simulated example from a study assessing factors that might predict pulmonary emphysema (where fingertip pigmentation and smoking are considered); we posed the following questions. Is pigmentation a confounding, causal or predictive factor? Is there perhaps another factor, like smoking, that confounds? Is there a synergy between pigmentation and smoking? The results, in terms of prediction, are similar with the two techniques; regarding causation, differences arise. We conclude that, in decision-making, the sum of both: a statistical tool, used with common sense, and previous evidence, taking years or even centuries to develop; is better than the automatic and exclusive use of statistical resources

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